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为bubbliiiing的yolo系列代码进行onnx部署(C++),目前已完美适配yolov4>>yolov5>>yolov5-6.1>>yolov7

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kivenyangming/yolo-bubbliiiing-onnx

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前言

  首先感谢bubbliiiing博主提供的训练代码! 整个部署程序分为四步(C++):

  1. 下载bubbliiiing博主项目更改predict 为 export_onnx
  2. 更改文件夹nets下的yolo.py代码
  3. 生成onnx文件
  4. 下载此项目进行cmake&make 经测试,可以对(pytorch版本的)yolov4 -- yolov5 -- yolov5-6.1 yolov7 进行转换测试 由于bubbliiiing博主已经将网络结构和如何训练,我这边就不再过多的讲述如何训练。

如何使用?

  这里我以yolov7为例子向大家展示如何得到onnx以及运行onnx进行部署(bubbliiiing博主v4>>v5>>v5-6.1同理)

Step1:

git clone https://github.com/bubbliiiing/yolov7-pytorch.git cd yolov7-pytorch
pip install -r requirements.txt
vim predict.py

line24: mode = "export_onnx" ## predict >> 'export_onnx'

Step2:

cd /nets
vim yolo.py

line300 ----line316:
        #---------------------------------------------------#
        #   第三个特征层
        #   y3=(batch_size, 75, 80, 80)
        #---------------------------------------------------#
        out2 = self.yolo_head_P3(P3)
        #---------------------------------------------------#
        #   第二个特征层
        #   y2=(batch_size, 75, 40, 40)
        #---------------------------------------------------#
        out1 = self.yolo_head_P4(P4)
        #---------------------------------------------------#
        #   第一个特征层
        #   y1=(batch_size, 75, 20, 20)
        #---------------------------------------------------#
        out0 = self.yolo_head_P5(P5)

        return [out0, out1, out2]

如下图为bubbliiiing博主源码生成的onnx输入输出信息截取

image

  bubbliiiing 这里的return[out0, out1, out2] 在经过"export_onnx"后并没有torch.cat,我们需要将输出的结果进行torch.cat操作, 在进行torch.cat操作之前需要将输出结果进行转换一下维度,详见如下代码:

        out2 = self.yolo_head_P3(P3)
        bs, _, ny, nx = out2.shape  
        
        # 这里的 no = 85[类别数nc(80) + 目标坐标和置信度(4+1)]
        
        out2 = out2.view(bs, 3, 85, ny, nx).permute(0, 1, 3, 4, 2).contiguous() # no = 85
        out2 = out2.view(bs * 3 * ny * nx, 85, 1).contiguous() #  no = 85
        # ---------------------------------------------------#
        #   第二个特征层
        # ---------------------------------------------------#
        out1 = self.yolo_head_P4(P4)
        bs, _, ny, nx = out1.shape
        out1 = out1.view(bs, 3, 85, ny, nx).permute(0, 1, 3, 4, 2).contiguous() #  no = 85
        out1 = out1.view(bs * 3 * ny * nx, 85, 1).contiguous() #  no = 85
        # ---------------------------------------------------#
        #   第一个特征层
        # ---------------------------------------------------#
        out0 = self.yolo_head_P5(P5)
        bs, _, ny, nx = out0.shape
        out0 = out0.view(bs, 3, 85, ny, nx).permute(0, 1, 3, 4, 2).contiguous() #  no = 85
        out0 = out0.view(bs * 3 * ny * nx, 85, 1).contiguous() #  no = 85

        output = torch.cat((out2, out1, out0))
        output = output.permute(2, 0, 1)

        # return [out0, out1, out2]
        return output

  使用上述的代码部分替代源代码的line300 至 line316: 更换后得到的信息下图所示
image

  大家在更换自己的数据集进行训练得到的权重进行pth2onnx时需要注意:上述代码注释部分的更换85(coco数据集的类别数+5), 在这里需要更换为自己的数据集的类别数再加上5。例如自己的数据集是10个类别(nc=10),那么这里的no=10+5 ;也就是85需要更改为15(no = nc + 5)

Step3:

cd ..
python predict.py
这样我们就可以得到C++调用onnx需要的权重

step4:

git clone https://github.com/kivenyangming/yolo-bubbliiiing-onnx.git
cd yolo-bubbliiiing-onnx
mkdir build
cd build
cmake ..
cmake --build . (或者:make)

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为bubbliiiing的yolo系列代码进行onnx部署(C++),目前已完美适配yolov4>>yolov5>>yolov5-6.1>>yolov7

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