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RT-DETR改进策略【模型轻量化】替换骨干网络为EfficientNetv1高效的移动倒置瓶颈结构-

RT-DETR改进策略【模型轻量化】| 替换骨干网络为EfficientNet v1 高效的移动倒置瓶颈结构

一、本文介绍

本文记录的是基于 EfficientNet v1的 RT-DETR轻量化改进方法研究 EfficientNet 采用了创新性的 复合缩放 方法,通过精心平衡网络 宽度 深度 分辨率 来提升性能。本文将 EfficientNet 的设计优势融入 RT-DETR 中,提升 RT-DETR 的性能与效率,使其在目标检测任务中表现更为出色。

本文配置了原模型中的 efficientnet-b0 efficientnet-b1 efficientnet-b2 efficientnet-b3 efficientnet-b4 efficientnet-b5 efficientnet-b6 efficientnet-b7 efficientnet-b8 efficientnet-l2 10 种不同大小的模型结构,以满足不同的需求。

模型 参数量 计算量 推理速度
rtdetr-l 32.8M 108.0GFLOPs 11.6ms
Improved 23.7M 60.8GFLOPs -


二、EfficientNet详解

EfficientNet: Rethinking Model Scaling for Convolutional Neural Networks

2.1 轻量设计出发点

  • 随着卷积神经网络的发展,模型规模不断扩大,但硬件内存限制使得在追求更高精度的同时需要更好的效率。

  • 传统的卷积神经网络如 AlexNet GoogleNet SENet 等虽然精度不断提高,但参数过多,面临硬件瓶颈。

  • 同时,在移动设备普及的背景下,也需要设计高效的小型网络,如 SqueezeNets MobileNets 等,但对于 大型模型的高效设计空间和调优成本问题仍未得到很好解决

因此, EfficientNet 旨在研究超大型且能超越现有精度的卷积神经网络的模型效率,通过 模型缩放 来实现这一目标。

2.2 结构原理

2.2.1 复合缩放方法

提出一种新的 复合缩放 方法,使用复合系数 ϕ \phi ϕ 统一缩放网络的宽度、深度和分辨率。具体公式为 d e p t h : d = α ϕ depth: d=\alpha^{\phi} d e pt h : d = α ϕ w i d t h : w = β ϕ width: w=\beta^{\phi} w i d t h : w = β ϕ r e s o l u t i o n : r = γ ϕ resolution: r=\gamma^{\phi} reso l u t i o n : r = γ ϕ 其中 α \alpha α β \beta β γ \gamma γ 是通过小网格搜索确定的常数,且满足 α ⋅ β 2 ⋅ γ 2 ≈ 2 \alpha \cdot \beta^{2} \cdot \gamma^{2} \approx 2 α β 2 γ 2 2 α ≥ 1 \alpha \geq 1 α 1 β ≥ 1 \beta \geq 1 β 1 γ ≥ 1 \gamma \geq 1 γ 1

这种方法基于观察到网络 宽度 深度 分辨率 之间存在相互关联,平衡这三个维度的缩放对于提高模型性能至关重要,而传统的单一维度缩放方法存在局限性。

例如,仅增加网络深度会遇到梯度消失问题,且精度提升会逐渐减小;仅增加宽度或分辨率也会出现精度饱和的情况。通过这种复合缩放方法,可以根据可用资源的增加,按照一定比例同时调整网络的各个维度,从而在保持效率的同时提高模型精度。

在这里插入图片描述

2.2.2 EfficientNet - B0基线网络

通过多目标神经架构搜索开发了新的移动尺寸基线网络 EfficientNet - B0

其主要构建模块是 移动倒置瓶颈MBConv ,并添加了 挤压与激励优化 。网络结构在不同阶段具有不同的层数、输入分辨率和输出通道数,如起始阶段是一个 C o n v 3 x 3 Conv3x3 C o n v 3 x 3 层,输入分辨率为 224 x 224 224x224 224 x 224 ,输出通道为 32 32 32 ,后续阶段包括不同类型的 MBConv层 卷积层 等,从 EfficientNet - B0 开始,通过上述 复合缩放 方法,固定 ϕ \phi ϕ 进行小网格搜索确定 α \alpha α β \beta β γ \gamma γ ,然后再固定这些系数,通过改变 ϕ \phi ϕ 来缩放基线网络,得到 EfficientNet - B1 B7 等一系列模型。

2.3 优势

  • 精度方面 :在ImageNet数据集上,EfficientNet - B7达到了84.3%的top - 1精度,超越了之前的最佳模型GPipe,同时使用的参数比GPipe少8.4倍。与广泛使用的ResNet - 50相比,EfficientNet - B4在相似的FLOPS下,将top - 1精度从76.3%提高到83.0%(提升了6.7%)。
  • 效率方面 :在推理速度上,EfficientNet - B1比ResNet - 152快5.7倍,EfficientNet - B7比GPipe快6.1倍。在计算资源使用上,一般比其他具有相似精度的卷积神经网络减少一个数量级的参数和FLOPS,如EfficientNet - B3使用的FLOPS比ResNeXt - 101少18倍,但精度更高。

论文: https://arxiv.org/pdf/1905.11946
源码: https://github.com/tensorflow/tpu/tree/master/models/official/efficientnet

三、EfficientNet v1的实现代码

EfficientNet v1 的实现代码如下:

import re
import math
import collections
from functools import partial
import torch
from torch import nn
from torch.nn import functional as F
from torch.utils import model_zoo

__all__ = ['efficient']

# Parameters for the entire model (stem, all blocks, and head)
GlobalParams = collections.namedtuple('GlobalParams', [
    'width_coefficient', 'depth_coefficient', 'image_size', 'dropout_rate',
    'num_classes', 'batch_norm_momentum', 'batch_norm_epsilon',
    'drop_connect_rate', 'depth_divisor', 'min_depth', 'include_top'])

# Parameters for an individual model block
BlockArgs = collections.namedtuple('BlockArgs', [
    'num_repeat', 'kernel_size', 'stride', 'expand_ratio',
    'input_filters', 'output_filters', 'se_ratio', 'id_skip'])

# Set GlobalParams and BlockArgs's defaults
GlobalParams.__new__.__defaults__ = (None,) * len(GlobalParams._fields)
BlockArgs.__new__.__defaults__ = (None,) * len(BlockArgs._fields)

# Swish activation function
if hasattr(nn, 'SiLU'):
    Swish = nn.SiLU
else:
    # For compatibility with old PyTorch versions
    class Swish(nn.Module):
        def forward(self, x):
            return x * torch.sigmoid(x)

# A memory-efficient implementation of Swish function
class SwishImplementation(torch.autograd.Function):
    @staticmethod
    def forward(ctx, i):
        result = i * torch.sigmoid(i)
        ctx.save_for_backward(i)
        return result

    @staticmethod
    def backward(ctx, grad_output):
        i = ctx.saved_tensors[0]
        sigmoid_i = torch.sigmoid(i)
        return grad_output * (sigmoid_i * (1 + i * (1 - sigmoid_i)))

class MemoryEfficientSwish(nn.Module):
    def forward(self, x):
        return SwishImplementation.apply(x)

def round_filters(filters, global_params):
    """Calculate and round number of filters based on width multiplier.
       Use width_coefficient, depth_divisor and min_depth of global_params.

    Args:
        filters (int): Filters number to be calculated.
        global_params (namedtuple): Global params of the model.

    Returns:
        new_filters: New filters number after calculating.
    """
    multiplier = global_params.width_coefficient
    if not multiplier:
        return filters
    # TODO: modify the params names.
    #       maybe the names (width_divisor,min_width)
    #       are more suitable than (depth_divisor,min_depth).
    divisor = global_params.depth_divisor
    min_depth = global_params.min_depth
    filters *= multiplier
    min_depth = min_depth or divisor  # pay attention to this line when using min_depth
    # follow the formula transferred from official TensorFlow implementation
    new_filters = max(min_depth, int(filters + divisor / 2) // divisor * divisor)
    if new_filters < 0.9 * filters:  # prevent rounding by more than 10%
        new_filters += divisor
    return int(new_filters)

def round_repeats(repeats, global_params):
    """Calculate module's repeat number of a block based on depth multiplier.
       Use depth_coefficient of global_params.

    Args:
        repeats (int): num_repeat to be calculated.
        global_params (namedtuple): Global params of the model.

    Returns:
        new repeat: New repeat number after calculating.
    """
    multiplier = global_params.depth_coefficient
    if not multiplier:
        return repeats
    # follow the formula transferred from official TensorFlow implementation
    return int(math.ceil(multiplier * repeats))

def drop_connect(inputs, p, training):
    """Drop connect.

    Args:
        input (tensor: BCWH): Input of this structure.
        p (float: 0.0~1.0): Probability of drop connection.
        training (bool): The running mode.

    Returns:
        output: Output after drop connection.
    """
    assert 0 <= p <= 1, 'p must be in range of [0,1]'

    if not training:
        return inputs

    batch_size = inputs.shape[0]
    keep_prob = 1 - p

    # generate binary_tensor mask according to probability (p for 0, 1-p for 1)
    random_tensor = keep_prob
    random_tensor += torch.rand([batch_size, 1, 1, 1], dtype=inputs.dtype, device=inputs.device)
    binary_tensor = torch.floor(random_tensor)

    output = inputs / keep_prob * binary_tensor
    return output

def get_width_and_height_from_size(x):
    """Obtain height and width from x.

    Args:
        x (int, tuple or list): Data size.

    Returns:
        size: A tuple or list (H,W).
    """
    if isinstance(x, int):
        return x, x
    if isinstance(x, list) or isinstance(x, tuple):
        return x
    else:
        raise TypeError()

def calculate_output_image_size(input_image_size, stride):
    """Calculates the output image size when using Conv2dSamePadding with a stride.
       Necessary for static padding. Thanks to mannatsingh for pointing this out.

    Args:
        input_image_size (int, tuple or list): Size of input image.
        stride (int, tuple or list): Conv2d operation's stride.

    Returns:
        output_image_size: A list [H,W].
    """
    if input_image_size is None:
        return None
    image_height, image_width = get_width_and_height_from_size(input_image_size)
    stride = stride if isinstance(stride, int) else stride[0]
    image_height = int(math.ceil(image_height / stride))
    image_width = int(math.ceil(image_width / stride))
    return [image_height, image_width]

# Note:
# The following 'SamePadding' functions make output size equal ceil(input size/stride).
# Only when stride equals 1, can the output size be the same as input size.
# Don't be confused by their function names ! ! !

def get_same_padding_conv2d(image_size=None):
    """Chooses static padding if you have specified an image size, and dynamic padding otherwise.
       Static padding is necessary for ONNX exporting of models.

    Args:
        image_size (int or tuple): Size of the image.

    Returns:
        Conv2dDynamicSamePadding or Conv2dStaticSamePadding.
    """
    if image_size is None:
        return Conv2dDynamicSamePadding
    else:
        return partial(Conv2dStaticSamePadding, image_size=image_size)

class Conv2dDynamicSamePadding(nn.Conv2d):
    """2D Convolutions like TensorFlow, for a dynamic image size.
       The padding is operated in forward function by calculating dynamically.
    """

    # Tips for 'SAME' mode padding.
    #     Given the following:
    #         i: width or height
    #         s: stride
    #         k: kernel size
    #         d: dilation
    #         p: padding
    #     Output after Conv2d:
    #         o = floor((i+p-((k-1)*d+1))/s+1)
    # If o equals i, i = floor((i+p-((k-1)*d+1))/s+1),
    # => p = (i-1)*s+((k-1)*d+1)-i

    def __init__(self, in_channels, out_channels, kernel_size, stride=1, dilation=1, groups=1, bias=True):
        super().__init__(in_channels, out_channels, kernel_size, stride, 0, dilation, groups, bias)
        self.stride = self.stride if len(self.stride) == 2 else [self.stride[0]] * 2

    def forward(self, x):
        ih, iw = x.size()[-2:]
        kh, kw = self.weight.size()[-2:]
        sh, sw = self.stride
        oh, ow = math.ceil(ih / sh), math.ceil(iw / sw)  # change the output size according to stride ! ! !
        pad_h = max((oh - 1) * self.stride[0] + (kh - 1) * self.dilation[0] + 1 - ih, 0)
        pad_w = max((ow - 1) * self.stride[1] + (kw - 1) * self.dilation[1] + 1 - iw, 0)
        if pad_h > 0 or pad_w > 0:
            x = F.pad(x, [pad_w // 2, pad_w - pad_w // 2, pad_h // 2, pad_h - pad_h // 2])
        return F.conv2d(x, self.weight, self.bias, self.stride, self.padding, self.dilation, self.groups)

class Conv2dStaticSamePadding(nn.Conv2d):
    """2D Convolutions like TensorFlow's 'SAME' mode, with the given input image size.
       The padding mudule is calculated in construction function, then used in forward.
    """

    # With the same calculation as Conv2dDynamicSamePadding

    def __init__(self, in_channels, out_channels, kernel_size, stride=1, image_size=None, **kwargs):
        super().__init__(in_channels, out_channels, kernel_size, stride, **kwargs)
        self.stride = self.stride if len(self.stride) == 2 else [self.stride[0]] * 2

        # Calculate padding based on image size and save it
        assert image_size is not None
        ih, iw = (image_size, image_size) if isinstance(image_size, int) else image_size
        kh, kw = self.weight.size()[-2:]
        sh, sw = self.stride
        oh, ow = math.ceil(ih / sh), math.ceil(iw / sw)
        pad_h = max((oh - 1) * self.stride[0] + (kh - 1) * self.dilation[0] + 1 - ih, 0)
        pad_w = max((ow - 1) * self.stride[1] + (kw - 1) * self.dilation[1] + 1 - iw, 0)
        if pad_h > 0 or pad_w > 0:
            self.static_padding = nn.ZeroPad2d((pad_w // 2, pad_w - pad_w // 2,
                                                pad_h // 2, pad_h - pad_h // 2))
        else:
            self.static_padding = nn.Identity()

    def forward(self, x):
        x = self.static_padding(x)
        x = F.conv2d(x, self.weight, self.bias, self.stride, self.padding, self.dilation, self.groups)
        return x

def get_same_padding_maxPool2d(image_size=None):
    """Chooses static padding if you have specified an image size, and dynamic padding otherwise.
       Static padding is necessary for ONNX exporting of models.

    Args:
        image_size (int or tuple): Size of the image.

    Returns:
        MaxPool2dDynamicSamePadding or MaxPool2dStaticSamePadding.
    """
    if image_size is None:
        return MaxPool2dDynamicSamePadding
    else:
        return partial(MaxPool2dStaticSamePadding, image_size=image_size)

class MaxPool2dDynamicSamePadding(nn.MaxPool2d):
    """2D MaxPooling like TensorFlow's 'SAME' mode, with a dynamic image size.
       The padding is operated in forward function by calculating dynamically.
    """

    def __init__(self, kernel_size, stride, padding=0, dilation=1, return_indices=False, ceil_mode=False):
        super().__init__(kernel_size, stride, padding, dilation, return_indices, ceil_mode)
        self.stride = [self.stride] * 2 if isinstance(self.stride, int) else self.stride
        self.kernel_size = [self.kernel_size] * 2 if isinstance(self.kernel_size, int) else self.kernel_size
        self.dilation = [self.dilation] * 2 if isinstance(self.dilation, int) else self.dilation

    def forward(self, x):
        ih, iw = x.size()[-2:]
        kh, kw = self.kernel_size
        sh, sw = self.stride
        oh, ow = math.ceil(ih / sh), math.ceil(iw / sw)
        pad_h = max((oh - 1) * self.stride[0] + (kh - 1) * self.dilation[0] + 1 - ih, 0)
        pad_w = max((ow - 1) * self.stride[1] + (kw - 1) * self.dilation[1] + 1 - iw, 0)
        if pad_h > 0 or pad_w > 0:
            x = F.pad(x, [pad_w // 2, pad_w - pad_w // 2, pad_h // 2, pad_h - pad_h // 2])
        return F.max_pool2d(x, self.kernel_size, self.stride, self.padding,
                            self.dilation, self.ceil_mode, self.return_indices)

class MaxPool2dStaticSamePadding(nn.MaxPool2d):
    """2D MaxPooling like TensorFlow's 'SAME' mode, with the given input image size.
       The padding mudule is calculated in construction function, then used in forward.
    """

    def __init__(self, kernel_size, stride, image_size=None, **kwargs):
        super().__init__(kernel_size, stride, **kwargs)
        self.stride = [self.stride] * 2 if isinstance(self.stride, int) else self.stride
        self.kernel_size = [self.kernel_size] * 2 if isinstance(self.kernel_size, int) else self.kernel_size
        self.dilation = [self.dilation] * 2 if isinstance(self.dilation, int) else self.dilation

        # Calculate padding based on image size and save it
        assert image_size is not None
        ih, iw = (image_size, image_size) if isinstance(image_size, int) else image_size
        kh, kw = self.kernel_size
        sh, sw = self.stride
        oh, ow = math.ceil(ih / sh), math.ceil(iw / sw)
        pad_h = max((oh - 1) * self.stride[0] + (kh - 1) * self.dilation[0] + 1 - ih, 0)
        pad_w = max((ow - 1) * self.stride[1] + (kw - 1) * self.dilation[1] + 1 - iw, 0)
        if pad_h > 0 or pad_w > 0:
            self.static_padding = nn.ZeroPad2d((pad_w // 2, pad_w - pad_w // 2, pad_h // 2, pad_h - pad_h // 2))
        else:
            self.static_padding = nn.Identity()

    def forward(self, x):
        x = self.static_padding(x)
        x = F.max_pool2d(x, self.kernel_size, self.stride, self.padding,
                         self.dilation, self.ceil_mode, self.return_indices)
        return x

################################################################################
# Helper functions for loading model params
################################################################################

# BlockDecoder: A Class for encoding and decoding BlockArgs
# efficientnet_params: A function to query compound coefficient
# get_model_params and efficientnet:
#     Functions to get BlockArgs and GlobalParams for efficientnet
# url_map and url_map_advprop: Dicts of url_map for pretrained weights
# load_pretrained_weights: A function to load pretrained weights

class BlockDecoder(object):
    """Block Decoder for readability,
       straight from the official TensorFlow repository.
    """

    @staticmethod
    def _decode_block_string(block_string):
        """Get a block through a string notation of arguments.

        Args:
            block_string (str): A string notation of arguments.
                                Examples: 'r1_k3_s11_e1_i32_o16_se0.25_noskip'.

        Returns:
            BlockArgs: The namedtuple defined at the top of this file.
        """
        assert isinstance(block_string, str)

        ops = block_string.split('_')
        options = {}
        for op in ops:
            splits = re.split(r'(\d.*)', op)
            if len(splits) >= 2:
                key, value = splits[:2]
                options[key] = value

        # Check stride
        assert (('s' in options and len(options['s']) == 1) or
                (len(options['s']) == 2 and options['s'][0] == options['s'][1]))

        return BlockArgs(
            num_repeat=int(options['r']),
            kernel_size=int(options['k']),
            stride=[int(options['s'][0])],
            expand_ratio=int(options['e']),
            input_filters=int(options['i']),
            output_filters=int(options['o']),
            se_ratio=float(options['se']) if 'se' in options else None,
            id_skip=('noskip' not in block_string))

    @staticmethod
    def _encode_block_string(block):
        """Encode a block to a string.

        Args:
            block (namedtuple): A BlockArgs type argument.

        Returns:
            block_string: A String form of BlockArgs.
        """
        args = [
            'r%d' % block.num_repeat,
            'k%d' % block.kernel_size,
            's%d%d' % (block.strides[0], block.strides[1]),
            'e%s' % block.expand_ratio,
            'i%d' % block.input_filters,
            'o%d' % block.output_filters
        ]
        if 0 < block.se_ratio <= 1:
            args.append('se%s' % block.se_ratio)
        if block.id_skip is False:
            args.append('noskip')
        return '_'.join(args)

    @staticmethod
    def decode(string_list):
        """Decode a list of string notations to specify blocks inside the network.

        Args:
            string_list (list[str]): A list of strings, each string is a notation of block.

        Returns:
            blocks_args: A list of BlockArgs namedtuples of block args.
        """
        assert isinstance(string_list, list)
        blocks_args = []
        for block_string in string_list:
            blocks_args.append(BlockDecoder._decode_block_string(block_string))
        return blocks_args

    @staticmethod
    def encode(blocks_args):
        """Encode a list of BlockArgs to a list of strings.

        Args:
            blocks_args (list[namedtuples]): A list of BlockArgs namedtuples of block args.

        Returns:
            block_strings: A list of strings, each string is a notation of block.
        """
        block_strings = []
        for block in blocks_args:
            block_strings.append(BlockDecoder._encode_block_string(block))
        return block_strings

def efficientnet_params(model_name):
    """Map EfficientNet model name to parameter coefficients.

    Args:
        model_name (str): Model name to be queried.

    Returns:
        params_dict[model_name]: A (width,depth,res,dropout) tuple.
    """
    params_dict = {
        # Coefficients:   width,depth,res,dropout
        'efficientnet-b0': (1.0, 1.0, 224, 0.2),
        'efficientnet-b1': (1.0, 1.1, 240, 0.2),
        'efficientnet-b2': (1.1, 1.2, 260, 0.3),
        'efficientnet-b3': (1.2, 1.4, 300, 0.3),
        'efficientnet-b4': (1.4, 1.8, 380, 0.4),
        'efficientnet-b5': (1.6, 2.2, 456, 0.4),
        'efficientnet-b6': (1.8, 2.6, 528, 0.5),
        'efficientnet-b7': (2.0, 3.1, 600, 0.5),
        'efficientnet-b8': (2.2, 3.6, 672, 0.5),
        'efficientnet-l2': (4.3, 5.3, 800, 0.5),
    }
    return params_dict[model_name]

def efficientnet(width_coefficient=None, depth_coefficient=None, image_size=None,
                 dropout_rate=0.2, drop_connect_rate=0.2, num_classes=1000, include_top=True):
    """Create BlockArgs and GlobalParams for efficientnet model.

    Args:
        width_coefficient (float)
        depth_coefficient (float)
        image_size (int)
        dropout_rate (float)
        drop_connect_rate (float)
        num_classes (int)

        Meaning as the name suggests.

    Returns:
        blocks_args, global_params.
    """

    # Blocks args for the whole model(efficientnet-b0 by default)
    # It will be modified in the construction of EfficientNet Class according to model
    blocks_args = [
        'r1_k3_s11_e1_i32_o16_se0.25',
        'r2_k3_s22_e6_i16_o24_se0.25',
        'r2_k5_s22_e6_i24_o40_se0.25',
        'r3_k3_s22_e6_i40_o80_se0.25',
        'r3_k5_s11_e6_i80_o112_se0.25',
        'r4_k5_s22_e6_i112_o192_se0.25',
        'r1_k3_s11_e6_i192_o320_se0.25',
    ]
    blocks_args = BlockDecoder.decode(blocks_args)

    global_params = GlobalParams(
        width_coefficient=width_coefficient,
        depth_coefficient=depth_coefficient,
        image_size=image_size,
        dropout_rate=dropout_rate,

        num_classes=num_classes,
        batch_norm_momentum=0.99,
        batch_norm_epsilon=1e-3,
        drop_connect_rate=drop_connect_rate,
        depth_divisor=8,
        min_depth=None,
        include_top=include_top,
    )

    return blocks_args, global_params

def get_model_params(model_name, override_params):
    """Get the block args and global params for a given model name.

    Args:
        model_name (str): Model's name.
        override_params (dict): A dict to modify global_params.

    Returns:
        blocks_args, global_params
    """
    if model_name.startswith('efficientnet'):
        w, d, s, p = efficientnet_params(model_name)
        # note: all models have drop connect rate = 0.2
        blocks_args, global_params = efficientnet(
            width_coefficient=w, depth_coefficient=d, dropout_rate=p, image_size=s)
    else:
        raise NotImplementedError('model name is not pre-defined: {}'.format(model_name))
    if override_params:
        # ValueError will be raised here if override_params has fields not included in global_params.
        global_params = global_params._replace(**override_params)
    return blocks_args, global_params

# train with Standard methods
# check more details in paper(EfficientNet: Rethinking Model Scaling for Convolutional Neural Networks)
url_map = {
    'efficientnet-b0': 'https://github.com/lukemelas/EfficientNet-PyTorch/releases/download/1.0/efficientnet-b0-355c32eb.pth',
    'efficientnet-b1': 'https://github.com/lukemelas/EfficientNet-PyTorch/releases/download/1.0/efficientnet-b1-f1951068.pth',
    'efficientnet-b2': 'https://github.com/lukemelas/EfficientNet-PyTorch/releases/download/1.0/efficientnet-b2-8bb594d6.pth',
    'efficientnet-b3': 'https://github.com/lukemelas/EfficientNet-PyTorch/releases/download/1.0/efficientnet-b3-5fb5a3c3.pth',
    'efficientnet-b4': 'https://github.com/lukemelas/EfficientNet-PyTorch/releases/download/1.0/efficientnet-b4-6ed6700e.pth',
    'efficientnet-b5': 'https://github.com/lukemelas/EfficientNet-PyTorch/releases/download/1.0/efficientnet-b5-b6417697.pth',
    'efficientnet-b6': 'https://github.com/lukemelas/EfficientNet-PyTorch/releases/download/1.0/efficientnet-b6-c76e70fd.pth',
    'efficientnet-b7': 'https://github.com/lukemelas/EfficientNet-PyTorch/releases/download/1.0/efficientnet-b7-dcc49843.pth',
}

# train with Adversarial Examples(AdvProp)
# check more details in paper(Adversarial Examples Improve Image Recognition)
url_map_advprop = {
    'efficientnet-b0': 'https://github.com/lukemelas/EfficientNet-PyTorch/releases/download/1.0/adv-efficientnet-b0-b64d5a18.pth',
    'efficientnet-b1': 'https://github.com/lukemelas/EfficientNet-PyTorch/releases/download/1.0/adv-efficientnet-b1-0f3ce85a.pth',
    'efficientnet-b2': 'https://github.com/lukemelas/EfficientNet-PyTorch/releases/download/1.0/adv-efficientnet-b2-6e9d97e5.pth',
    'efficientnet-b3': 'https://github.com/lukemelas/EfficientNet-PyTorch/releases/download/1.0/adv-efficientnet-b3-cdd7c0f4.pth',
    'efficientnet-b4': 'https://github.com/lukemelas/EfficientNet-PyTorch/releases/download/1.0/adv-efficientnet-b4-44fb3a87.pth',
    'efficientnet-b5': 'https://github.com/lukemelas/EfficientNet-PyTorch/releases/download/1.0/adv-efficientnet-b5-86493f6b.pth',
    'efficientnet-b6': 'https://github.com/lukemelas/EfficientNet-PyTorch/releases/download/1.0/adv-efficientnet-b6-ac80338e.pth',
    'efficientnet-b7': 'https://github.com/lukemelas/EfficientNet-PyTorch/releases/download/1.0/adv-efficientnet-b7-4652b6dd.pth',
    'efficientnet-b8': 'https://github.com/lukemelas/EfficientNet-PyTorch/releases/download/1.0/adv-efficientnet-b8-22a8fe65.pth',
}

# TODO: add the petrained weights url map of 'efficientnet-l2'

def load_pretrained_weights(model, model_name, weights_path=None, load_fc=True, advprop=False, verbose=True):
    """Loads pretrained weights from weights path or download using url.

    Args:
        model (Module): The whole model of efficientnet.
        model_name (str): Model name of efficientnet.
        weights_path (None or str):
            str: path to pretrained weights file on the local disk.
            None: use pretrained weights downloaded from the Internet.
        load_fc (bool): Whether to load pretrained weights for fc layer at the end of the model.
        advprop (bool): Whether to load pretrained weights
                        trained with advprop (valid when weights_path is None).
    """
    if isinstance(weights_path, str):
        state_dict = torch.load(weights_path)
    else:
        # AutoAugment or Advprop (different preprocessing)
        url_map_ = url_map_advprop if advprop else url_map
        state_dict = model_zoo.load_url(url_map_[model_name])

    if load_fc:
        ret = model.load_state_dict(state_dict, strict=False)
        assert not ret.missing_keys, 'Missing keys when loading pretrained weights: {}'.format(ret.missing_keys)
    else:
        state_dict.pop('_fc.weight')
        state_dict.pop('_fc.bias')
        ret = model.load_state_dict(state_dict, strict=False)
        assert set(ret.missing_keys) == set(
            ['_fc.weight', '_fc.bias']), 'Missing keys when loading pretrained weights: {}'.format(ret.missing_keys)
    assert not ret.unexpected_keys, 'Missing keys when loading pretrained weights: {}'.format(ret.unexpected_keys)

    if verbose:
        print('Loaded pretrained weights for {}'.format(model_name))

VALID_MODELS = (
    'efficientnet-b0', 'efficientnet-b1', 'efficientnet-b2', 'efficientnet-b3',
    'efficientnet-b4', 'efficientnet-b5', 'efficientnet-b6', 'efficientnet-b7',
    'efficientnet-b8',

    # Support the construction of 'efficientnet-l2' without pretrained weights
    'efficientnet-l2'
)

class MBConvBlock(nn.Module):
    """Mobile Inverted Residual Bottleneck Block.

    Args:
        block_args (namedtuple): BlockArgs, defined in utils.py.
        global_params (namedtuple): GlobalParam, defined in utils.py.
        image_size (tuple or list): [image_height, image_width].

    References:
        [1] https://arxiv.org/abs/1704.04861 (MobileNet v1)
        [2] https://arxiv.org/abs/1801.04381 (MobileNet v2)
        [3] https://arxiv.org/abs/1905.02244 (MobileNet v3)
    """

    def __init__(self, block_args, global_params, image_size=None):
        super().__init__()
        self._block_args = block_args
        self._bn_mom = 1 - global_params.batch_norm_momentum  # pytorch's difference from tensorflow
        self._bn_eps = global_params.batch_norm_epsilon
        self.has_se = (self._block_args.se_ratio is not None) and (0 < self._block_args.se_ratio <= 1)
        self.id_skip = block_args.id_skip  # whether to use skip connection and drop connect

        # Expansion phase (Inverted Bottleneck)
        inp = self._block_args.input_filters  # number of input channels
        oup = self._block_args.input_filters * self._block_args.expand_ratio  # number of output channels
        if self._block_args.expand_ratio != 1:
            Conv2d = get_same_padding_conv2d(image_size=image_size)
            self._expand_conv = Conv2d(in_channels=inp, out_channels=oup, kernel_size=1, bias=False)
            self._bn0 = nn.BatchNorm2d(num_features=oup, momentum=self._bn_mom, eps=self._bn_eps)
            # image_size = calculate_output_image_size(image_size, 1) <-- this wouldn't modify image_size

        # Depthwise convolution phase
        k = self._block_args.kernel_size
        s = self._block_args.stride
        Conv2d = get_same_padding_conv2d(image_size=image_size)
        self._depthwise_conv = Conv2d(
            in_channels=oup, out_channels=oup, groups=oup,  # groups makes it depthwise
            kernel_size=k, stride=s, bias=False)
        self._bn1 = nn.BatchNorm2d(num_features=oup, momentum=self._bn_mom, eps=self._bn_eps)
        image_size = calculate_output_image_size(image_size, s)

        # Squeeze and Excitation layer, if desired
        if self.has_se:
            Conv2d = get_same_padding_conv2d(image_size=(1, 1))
            num_squeezed_channels = max(1, int(self._block_args.input_filters * self._block_args.se_ratio))
            self._se_reduce = Conv2d(in_channels=oup, out_channels=num_squeezed_channels, kernel_size=1)
            self._se_expand = Conv2d(in_channels=num_squeezed_channels, out_channels=oup, kernel_size=1)

        # Pointwise convolution phase
        final_oup = self._block_args.output_filters
        Conv2d = get_same_padding_conv2d(image_size=image_size)
        self._project_conv = Conv2d(in_channels=oup, out_channels=final_oup, kernel_size=1, bias=False)
        self._bn2 = nn.BatchNorm2d(num_features=final_oup, momentum=self._bn_mom, eps=self._bn_eps)
        self._swish = MemoryEfficientSwish()

    def forward(self, inputs, drop_connect_rate=None):
        """MBConvBlock's forward function.

        Args:
            inputs (tensor): Input tensor.
            drop_connect_rate (bool): Drop connect rate (float, between 0 and 1).

        Returns:
            Output of this block after processing.
        """

        # Expansion and Depthwise Convolution
        x = inputs
        if self._block_args.expand_ratio != 1:
            x = self._expand_conv(inputs)
            x = self._bn0(x)
            x = self._swish(x)

        x = self._depthwise_conv(x)
        x = self._bn1(x)
        x = self._swish(x)

        # Squeeze and Excitation
        if self.has_se:
            x_squeezed = F.adaptive_avg_pool2d(x, 1)
            x_squeezed = self._se_reduce(x_squeezed)
            x_squeezed = self._swish(x_squeezed)
            x_squeezed = self._se_expand(x_squeezed)
            x = torch.sigmoid(x_squeezed) * x

        # Pointwise Convolution
        x = self._project_conv(x)
        x = self._bn2(x)

        # Skip connection and drop connect
        input_filters, output_filters = self._block_args.input_filters, self._block_args.output_filters
        if self.id_skip and self._block_args.stride == 1 and input_filters == output_filters:
            # The combination of skip connection and drop connect brings about stochastic depth.
            if drop_connect_rate:
                x = drop_connect(x, p=drop_connect_rate, training=self.training)
            x = x + inputs  # skip connection
        return x

    def set_swish(self, memory_efficient=True):
        """Sets swish function as memory efficient (for training) or standard (for export).

        Args:
            memory_efficient (bool): Whether to use memory-efficient version of swish.
        """
        self._swish = MemoryEfficientSwish() if memory_efficient else Swish()

class EfficientNet(nn.Module):

    def __init__(self, blocks_args=None, global_params=None):
        super().__init__()
        assert isinstance(blocks_args, list), 'blocks_args should be a list'
        assert len(blocks_args) > 0, 'block args must be greater than 0'
        self._global_params = global_params
        self._blocks_args = blocks_args

        # Batch norm parameters
        bn_mom = 1 - self._global_params.batch_norm_momentum
        bn_eps = self._global_params.batch_norm_epsilon

        # Get stem static or dynamic convolution depending on image size
        image_size = global_params.image_size
        Conv2d = get_same_padding_conv2d(image_size=image_size)

        # Stem
        in_channels = 3  # rgb
        out_channels = round_filters(32, self._global_params)  # number of output channels
        self._conv_stem = Conv2d(in_channels, out_channels, kernel_size=3, stride=2, bias=False)
        self._bn0 = nn.BatchNorm2d(num_features=out_channels, momentum=bn_mom, eps=bn_eps)
        image_size = calculate_output_image_size(image_size, 2)

        # Build blocks
        self._blocks = nn.ModuleList([])
        for block_args in self._blocks_args:

            # Update block input and output filters based on depth multiplier.
            block_args = block_args._replace(
                input_filters=round_filters(block_args.input_filters, self._global_params),
                output_filters=round_filters(block_args.output_filters, self._global_params),
                num_repeat=round_repeats(block_args.num_repeat, self._global_params)
            )

            # The first block needs to take care of stride and filter size increase.
            self._blocks.append(MBConvBlock(block_args, self._global_params, image_size=image_size))
            image_size = calculate_output_image_size(image_size, block_args.stride)
            if block_args.num_repeat > 1:  # modify block_args to keep same output size
                block_args = block_args._replace(input_filters=block_args.output_filters, stride=1)
            for _ in range(block_args.num_repeat - 1):
                self._blocks.append(MBConvBlock(block_args, self._global_params, image_size=image_size))
                # image_size = calculate_output_image_size(image_size, block_args.stride)  # stride = 1

        # Head
        in_channels = block_args.output_filters  # output of final block
        out_channels = round_filters(1280, self._global_params)
        Conv2d = get_same_padding_conv2d(image_size=image_size)
        self._conv_head = Conv2d(in_channels, out_channels, kernel_size=1, bias=False)
        self._bn1 = nn.BatchNorm2d(num_features=out_channels, momentum=bn_mom, eps=bn_eps)

        # Final linear layer
        self._avg_pooling = nn.AdaptiveAvgPool2d(1)
        if self._global_params.include_top:
            self._dropout = nn.Dropout(self._global_params.dropout_rate)
            self._fc = nn.Linear(out_channels, self._global_params.num_classes)

        # set activation to memory efficient swish by default
        self._swish = MemoryEfficientSwish()
        self.width_list = [i.size(1) for i in self.forward(torch.randn(1, 3, 640, 640))]
    def set_swish(self, memory_efficient=True):
        """Sets swish function as memory efficient (for training) or standard (for export).
        Args:
            memory_efficient (bool): Whether to use memory-efficient version of swish.
        """
        self._swish = MemoryEfficientSwish() if memory_efficient else Swish()
        for block in self._blocks:
            block.set_swish(memory_efficient)

    def extract_endpoints(self, inputs):
        # """Use convolution layer to extract features
        # from reduction levels i in [1, 2, 3, 4, 5].
        #
        # Args:
        #     inputs (tensor): Input tensor.
        #
        # Returns:
        #     Dictionary of last intermediate features
        #     with reduction levels i in [1, 2, 3, 4, 5].
        #     Example:
        #         >>> import torch
        #         >>> from efficientnet.model import EfficientNet
        #         >>> inputs = torch.rand(1, 3, 224, 224)
        #         >>> model = EfficientNet.from_pretrained('efficientnet-b0')
        #         >>> endpoints = model.extract_endpoints(inputs)
        #         >>> print(endpoints['reduction_1'].shape)  # torch.Size([1, 16, 112, 112])
        #         >>> print(endpoints['reduction_2'].shape)  # torch.Size([1, 24, 56, 56])
        #         >>> print(endpoints['reduction_3'].shape)  # torch.Size([1, 40, 28, 28])
        #         >>> print(endpoints['reduction_4'].shape)  # torch.Size([1, 112, 14, 14])
        #         >>> print(endpoints['reduction_5'].shape)  # torch.Size([1, 320, 7, 7])
        #         >>> print(endpoints['reduction_6'].shape)  # torch.Size([1, 1280, 7, 7])
        # """
        endpoints = dict()

        # Stem
        x = self._swish(self._bn0(self._conv_stem(inputs)))
        prev_x = x

        # Blocks
        for idx, block in enumerate(self._blocks):
            drop_connect_rate = self._global_params.drop_connect_rate
            if drop_connect_rate:
                drop_connect_rate *= float(idx) / len(self._blocks)  # scale drop connect_rate
            x = block(x, drop_connect_rate=drop_connect_rate)
            if prev_x.size(2) > x.size(2):
                endpoints['reduction_{}'.format(len(endpoints) + 1)] = prev_x
            elif idx == len(self._blocks) - 1:
                endpoints['reduction_{}'.format(len(endpoints) + 1)] = x
            prev_x = x

        # Head
        x = self._swish(self._bn1(self._conv_head(x)))
        endpoints['reduction_{}'.format(len(endpoints) + 1)] = x

        return endpoints

    def forward(self, inputs):
        """use convolution layer to extract feature .

        Args:
            inputs (tensor): Input tensor.

        Returns:
            Output of the final convolution
            layer in the efficientnet model.
        """
        # Stem
        x = self._swish(self._bn0(self._conv_stem(inputs)))
        unique_tensors = {}
        # Blocks
        for idx, block in enumerate(self._blocks):
            drop_connect_rate = self._global_params.drop_connect_rate
            if drop_connect_rate:
                drop_connect_rate *= float(idx) / len(self._blocks)  # scale drop connect_rate
            x = block(x, drop_connect_rate=drop_connect_rate)
            width, height = x.shape[2], x.shape[3]
            unique_tensors[(width, height)] = x
        result_list = list(unique_tensors.values())[-4:]
        # Head
        return result_list

    @classmethod
    def from_name(cls, model_name, in_channels=3, **override_params):
        """Create an efficientnet model according to name.

        Args:
            model_name (str): Name for efficientnet.
            in_channels (int): Input data's channel number.
            override_params (other key word params):
                Params to override model's global_params.
                Optional key:
                    'width_coefficient', 'depth_coefficient',
                    'image_size', 'dropout_rate',
                    'num_classes', 'batch_norm_momentum',
                    'batch_norm_epsilon', 'drop_connect_rate',
                    'depth_divisor', 'min_depth'

        Returns:
            An efficientnet model.
        """
        cls._check_model_name_is_valid(model_name)
        blocks_args, global_params = get_model_params(model_name, override_params)
        model = cls(blocks_args, global_params)
        model._change_in_channels(in_channels)
        return model

    @classmethod
    def from_pretrained(cls, model_name, weights_path=None, advprop=False,
                        in_channels=3, num_classes=1000, **override_params):
        """Create an efficientnet model according to name.

        Args:
            model_name (str): Name for efficientnet.
            weights_path (None or str):
                str: path to pretrained weights file on the local disk.
                None: use pretrained weights downloaded from the Internet.
            advprop (bool):
                Whether to load pretrained weights
                trained with advprop (valid when weights_path is None).
            in_channels (int): Input data's channel number.
            num_classes (int):
                Number of categories for classification.
                It controls the output size for final linear layer.
            override_params (other key word params):
                Params to override model's global_params.
                Optional key:
                    'width_coefficient', 'depth_coefficient',
                    'image_size', 'dropout_rate',
                    'batch_norm_momentum',
                    'batch_norm_epsilon', 'drop_connect_rate',
                    'depth_divisor', 'min_depth'

        Returns:
            A pretrained efficientnet model.
        """
        model = cls.from_name(model_name, num_classes=num_classes, **override_params)
        load_pretrained_weights(model, model_name, weights_path=weights_path,
                                load_fc=(num_classes == 1000), advprop=advprop)
        model._change_in_channels(in_channels)
        return model

    @classmethod
    def get_image_size(cls, model_name):
        """Get the input image size for a given efficientnet model.

        Args:
            model_name (str): Name for efficientnet.

        Returns:
            Input image size (resolution).
        """
        cls._check_model_name_is_valid(model_name)
        _, _, res, _ = efficientnet_params(model_name)
        return res

    @classmethod
    def _check_model_name_is_valid(cls, model_name):
        """Validates model name.

        Args:
            model_name (str): Name for efficientnet.

        Returns:
            bool: Is a valid name or not.
        """
        if model_name not in VALID_MODELS:
            raise ValueError('model_name should be one of: ' + ', '.join(VALID_MODELS))

    def _change_in_channels(self, in_channels):
        """Adjust model's first convolution layer to in_channels, if in_channels not equals 3.

        Args:
            in_channels (int): Input data's channel number.
        """
        if in_channels != 3:
            Conv2d = get_same_padding_conv2d(image_size=self._global_params.image_size)
            out_channels = round_filters(32, self._global_params)
            self._conv_stem = Conv2d(in_channels, out_channels, kernel_size=3, stride=2, bias=False)

def efficient(model_name='efficientnet-b0', pretrained=False):
    if pretrained:
        model = EfficientNet.from_pretrained('{}'.format(model_name))
    else:
        model = EfficientNet.from_name('{}'.format(model_name))
    return model

if __name__ == "__main__":

    # VALID_MODELS = (
    #     'efficientnet-b0', 'efficientnet-b1', 'efficientnet-b2', 'efficientnet-b3',
    #     'efficientnet-b4', 'efficientnet-b5', 'efficientnet-b6', 'efficientnet-b7',
    #     'efficientnet-b8',
    #     # Support the construction of 'efficientnet-l2' without pretrained weights
    #     'efficientnet-l2'
    # )

    # Generating Sample image
    image_size = (1, 3, 640, 640)
    image = torch.rand(*image_size)

    # Model
    model = efficient('efficientnet-b0')

    out = model(image)
    print(len(out))


四、修改步骤

4.1 修改一

① 在 ultralytics/nn/ 目录下新建 AddModules 文件夹用于存放模块代码

② 在 AddModules 文件夹下新建 EfficientNetV1.py ,将 第三节 中的代码粘贴到此处

在这里插入图片描述

4.2 修改二

AddModules 文件夹下新建 __init__.py (已有则不用新建),在文件内导入模块: from .EfficientNetV1 import *

在这里插入图片描述

4.3 修改三

ultralytics/nn/modules/tasks.py 文件中,需要在两处位置添加各模块类名称。

① 首先:导入模块

在这里插入图片描述

② 其次:在 parse_model函数 的如下位置添加两行代码:

在这里插入图片描述

backbone = False
t=m

在这里插入图片描述

③ 接着,在此函数下添加如下代码:

elif m in {efficient}:
    m = m(*args)
    c2 = m.width_list 
    backbone = True

在这里插入图片描述

④ 然后,将下方红框内的代码全部替换:

if isinstance(c2, list):
    is_backbone = True
    m_ = m
    m_.backbone = True
else:
    m_ = nn.Sequential(*(m(*args) for _ in range(n))) if n > 1 else m(*args)  # module
    t = str(m)[8:-2].replace('__main__.', '')  # module type
m.np = sum(x.numel() for x in m_.parameters())  # number params
m_.i, m_.f, m_.type = i + 4 if is_backbone else i, f, t  # attach index, 'from' index, type
if verbose:
    LOGGER.info(f'{i:>3}{str(f):>20}{n_:>3}{m.np:10.0f}  {t:<45}{str(args):<30}')  # print
save.extend(x % (i + 4 if is_backbone else i) for x in ([f] if isinstance(f, int) else f) if
            x != -1)  # append to savelist
layers.append(m_)
if i == 0:
    ch = []
if isinstance(c2, list):
    ch.extend(c2)
    for _ in range(5 - len(ch)):
        ch.insert(0, 0)
else:
    ch.append(c2)

替换后如下:

在这里插入图片描述

⑤ 在此文件下找到 base_model _predict_once ,并将其替换成如下代码。

def _predict_once(self, x, profile=False, visualize=False, embed=None):
    y, dt, embeddings = [], [], []  # outputs
    for m in self.model:
        if m.f != -1:  # if not from previous layer
            x = y[m.f] if isinstance(m.f, int) else [x if j == -1 else y[j] for j in m.f]  # from earlier layers
        if profile:
            self._profile_one_layer(m, x, dt)
        if hasattr(m, 'backbone'):
            x = m(x)
            if len(x) != 5:  # 0 - 5
                x.insert(0, None)
            for index, i in enumerate(x):
                if index in self.save:
                    y.append(i)
                else:
                    y.append(None)
            x = x[-1]  # 最后一个输出传给下一层
        else:
            x = m(x)  # run
            y.append(x if m.i in self.save else None)  # save output
        if visualize:
            feature_visualization(x, m.type, m.i, save_dir=visualize)
        if embed and m.i in embed:
            embeddings.append(nn.functional.adaptive_avg_pool2d(x, (1, 1)).squeeze(-1).squeeze(-1))  # flatten
            if m.i == max(embed):
                return torch.unbind(torch.cat(embeddings, 1), dim=0)
    return x

在这里插入图片描述

至此就修改完成了,可以配置模型开始训练了


五、yaml模型文件

5.1 模型改进⭐

在代码配置完成后,配置模型的YAML文件。

此处以 ultralytics/cfg/models/rt-detr/rtdetr-l.yaml 为例,在同目录下创建一个用于自己数据集训练的模型文件 rtdetr-EfficientNetV1.yaml

rtdetr.yaml 中的内容复制到 rtdetr-EfficientNetV1.yaml 文件下,修改 nc 数量等于自己数据中目标的数量。

📌 模型的修改方法是将 骨干网络 替换成 efficient

# Ultralytics YOLO 🚀, AGPL-3.0 license
# RT-DETR-l object detection model with P3-P5 outputs. For details see https://docs.ultralytics.com/models/rtdetr

# Parameters
nc: 1  # number of classes
scales: # model compound scaling constants, i.e. 'model=yolov8n-cls.yaml' will call yolov8-cls.yaml with scale 'n'
  # [depth, width, max_channels]
  l: [1.00, 1.00, 1024]

backbone:
  # [from, repeats, module, args]
  - [-1, 1, efficient, []]  # 4

head:
  - [-1, 1, Conv, [256, 1, 1, None, 1, 1, False]]  # 5 input_proj.2
  - [-1, 1, AIFI, [1024, 8]] # 6
  - [-1, 1, Conv, [256, 1, 1]]  # 7, Y5, lateral_convs.0

  - [-1, 1, nn.Upsample, [None, 2, 'nearest']] # 8
  - [3, 1, Conv, [256, 1, 1, None, 1, 1, False]]  # 9 input_proj.1
  - [[-2, -1], 1, Concat, [1]] # 10
  - [-1, 3, RepC3, [256]]  # 11, fpn_blocks.0
  - [-1, 1, Conv, [256, 1, 1]]   # 12, Y4, lateral_convs.1

  - [-1, 1, nn.Upsample, [None, 2, 'nearest']] # 13
  - [2, 1, Conv, [256, 1, 1, None, 1, 1, False]]  # 14 input_proj.0
  - [[-2, -1], 1, Concat, [1]]  # 15 cat backbone P4
  - [-1, 3, RepC3, [256]]    # X3 (16), fpn_blocks.1

  - [-1, 1, Conv, [256, 3, 2]]   # 17, downsample_convs.0
  - [[-1, 12], 1, Concat, [1]]  # 18 cat Y4
  - [-1, 3, RepC3, [256]]    # F4 (19), pan_blocks.0

  - [-1, 1, Conv, [256, 3, 2]]   # 20, downsample_convs.1
  - [[-1, 7], 1, Concat, [1]]  # 21 cat Y5
  - [-1, 3, RepC3, [256]]    # F5 (22), pan_blocks.1

  - [[16, 19, 22], 1, RTDETRDecoder, [nc]]  # Detect(P3, P4, P5)


六、成功运行结果

分别打印网络模型可以看到 EfficientNetV1模块 已经加入到模型中,并可以进行训练了。

rtdetr-EfficientNetV1

rtdetr-EfficientNetV1 summary: 619 layers, 23,746,631 parameters, 23,746,631 gradients, 60.8 GFLOPs

                  from  n    params  module                                       arguments                     
  0                  -1  1   5288548  efficient                                    []                            
  1                  -1  1     82432  ultralytics.nn.modules.conv.Conv             [320, 256, 1, 1, None, 1, 1, False]
  2                  -1  1    789760  ultralytics.nn.modules.transformer.AIFI      [256, 1024, 8]                
  3                  -1  1     66048  ultralytics.nn.modules.conv.Conv             [256, 256, 1, 1]              
  4                  -1  1         0  torch.nn.modules.upsampling.Upsample         [None, 2, 'nearest']          
  5                   3  1     29184  ultralytics.nn.modules.conv.Conv             [112, 256, 1, 1, None, 1, 1, False]
  6            [-2, -1]  1         0  ultralytics.nn.modules.conv.Concat           [1]                           
  7                  -1  3   2232320  ultralytics.nn.modules.block.RepC3           [512, 256, 3]                 
  8                  -1  1     66048  ultralytics.nn.modules.conv.Conv             [256, 256, 1, 1]              
  9                  -1  1         0  torch.nn.modules.upsampling.Upsample         [None, 2, 'nearest']          
 10                   2  1     10752  ultralytics.nn.modules.conv.Conv             [40, 256, 1, 1, None, 1, 1, False]
 11            [-2, -1]  1         0  ultralytics.nn.modules.conv.Concat           [1]                           
 12                  -1  3   2232320  ultralytics.nn.modules.block.RepC3           [512, 256, 3]                 
 13                  -1  1    590336  ultralytics.nn.modules.conv.Conv             [256, 256, 3, 2]              
 14            [-1, 12]  1         0  ultralytics.nn.modules.conv.Concat           [1]                           
 15                  -1  3   2232320  ultralytics.nn.modules.block.RepC3           [512, 256, 3]                 
 16                  -1  1    590336  ultralytics.nn.modules.conv.Conv             [256, 256, 3, 2]              
 17             [-1, 7]  1         0  ultralytics.nn.modules.conv.Concat           [1]                           
 18                  -1  3   2232320  ultralytics.nn.modules.block.RepC3           [512, 256, 3]                 
 19        [16, 19, 22]  1   7303907  ultralytics.nn.modules.head.RTDETRDecoder    [1, [256, 256, 256]]          
rtdetr-EfficientNetV1 summary: 619 layers, 23,746,631 parameters, 23,746,631 gradients, 60.8 GFLOPs