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Multiple Object Detection of Workpieces Based on Fusion of Deep Learning and Image Processing*

机译:基于深度学习和图像处理融合的工件多目标检测*

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摘要

A workpiece detection method based on fusion of deep learning and image processing is proposed. Firstly, the workpiece bounding boxes are located in the workpiece images by YOLOv3, whose parameters are compressed by an improved convolutional neural network residual structure pruning strategy. Then, the workpiece images are cropped based on the bounding boxes with cropping biases. Finally, the contours and suitable gripping points of the workpieces are obtained through image processing. The experimental results show that mean Average Precision (mAP) is 98.60% for YOLOv3, and 99.38% for that one by pruning 50.89% of its parameters, and the inference time is shortened by 31.13%. Image processing effectively corrects the bounding boxes obtained by deep learning, and obtains workpiece contour and gripping point information.
机译:提出了一种基于深度学习与图像处理融合的工件检测方法。首先,通过YOLOv3将工件边界框定位在工件图像中,并通过改进的卷积神经网络残差结构修剪策略压缩其参数。然后,基于带有裁切偏差的边界框裁切工件图像。最后,通过图像处理获得工件的轮廓和合适的抓握点。实验结果表明,通过删减50.89%的参数,YOLOv3的平均平均精度(mAP)为98.60%,对于该平均精度为99.38%,推理时间缩短了31.13%。图像处理有效地校正了通过深度学习获得的边界框,并获得了工件轮廓和抓地点信息。

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