基于卷积神经网络的平面图像特征提取方法

Shengjun Yang, Zhonglan Wu, Xiaohong Li, Yun Hong
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摘要

本文得到四川省 2022YFG0070 科技计划项目的支持。图像特征提取技术在工业产品加工的测控过程中起着非常重要的作用,但对于背景中的平面微缺陷,目前通用的单枪多箱检测器(SSD)存在特征信息易丢失、检测精度低、检测特征图数量不足等缺点。针对上述问题,结合测控处理过程中图像特征提取的特点和要求,本文提出并设计了 BSSD 算法。该算法利用 ResNet34 提取更多的微缺陷信息,解决了特征提取的问题;选取了 7 个多尺度特征图,增加了检测微缺陷的特征图数量;在多尺度特征图输入分类网络之前,设置了回溯层,将高层网络的抽象信息融合到浅层网络中,增强了抽象特征的表达能力。实验数据表明,其精度与 DSSD 相当,速度与 FSSD 相近,在小目标检测精度方面具有明显优势。
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A Method for Extracting Planar Image Features based on Convolution Neural Network
This paper is supported by the 2022YFG0070 science and technology plan of Sichuan Province. Image feature extraction technology plays a very important role in the measurement and control process of industrial product processing, but for planar micro defects in the background, the current general single shot multibox detector (SSD) has some disadvantages, such as easy loss of feature information, low detection accuracy, and insufficient number of detection feature maps. In view of the above problems, combined with the characteristics and requirements of image feature extraction in the process of measurement and control processing, this paper proposes and designs BSSD algorithm. The algorithm uses ResNet34 to extract more micro defect information to solve the problem of feature extraction; Seven multi-scale feature maps were selected to increase the number of feature maps for detecting micro defects; A backtracking layer is set up to fuse the abstract information of the high-level network into the shallow network before the multi-scale feature map is input into the classification network to enhance the expression ability of the abstract features. The experimental data show that the accuracy is comparable to DSSD, and the speed is similar to FSSD, which shows a significant advantage in the accuracy of small target detection.
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