基于改进更快R-CNN的子午线轮胎带层小尺寸缺陷检测

Pengcheng Li, Zihao Dong, Jianjie Shi, Zengzhi Pang, Jinping Li
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引用次数: 3

摘要

子午线轮胎带层帘线结构复杂,在制造过程中容易出现帘线重叠、帘线开裂、杂质等各种缺陷。随着深度学习的发展,基于卷积神经网络的物体检测成为一种常用的缺陷检测方法。由于缺陷尺寸的变化,这种方法输出的特征图的接受域较大,而小尺寸缺陷产生的特征较弱,容易被遗漏。为了解决卷积神经网络对小尺寸缺陷提取的特征较弱的问题,提出了一种基于改进Faster R-CNN的带层缺陷检测方法。采用Faster-R-CNN的卷积层进行特征融合,解决了细微缺陷特征提取不足的问题。同时,利用DIoU (Distance Intersection over Union)获得对目标尺度更敏感的目标盒,解决缺陷边界盒松散的问题。算法步骤如下:首先对带层区域进行分割。首先通过垂直投影对肩带层和带层进行分割,然后根据肩带区域水平线束的特征,结合极值滤波(EVF)和二值化对带层区域进行分割。其次,构建带层缺陷数据集,放大缺陷目标在图像中的面积比例;第三,利用Faster R-CNN的共享卷积层进行前层特征融合,确保特征映射包含更高级别的特征和更高分辨率的特征。最后,使用DIoU获得对尺度更敏感的边界框。在包含6316个训练对象盒和1036个测试对象盒的缺陷数据集上进行实验。与普通的Faster R-CNN相比,假阴性率下降了7.79%,假阳性率下降了3.4%,f得分提高了5%,检测框更适合缺陷对象。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detection of Small Size Defects in Belt Layer of Radial Tire Based on Improved Faster R-CNN
The cord structure of belt layer in radial tire is complex, and various defects such as cord overlapping, cord cracking and impurities may occur during manufacturing. With the development of deep learning, object detection based on convolutional neural network become a common defect detection method. Due to the variety of defect sizes, the receptive field of the feature map output by this kind of method is large, whereas the small-size defect yields weak feature and may be readily missed. In order to solve the problem that the feature extracted by the convolutional neural network of small-size defect is weak, a belt layer defect detection method based on improved Faster R-CNN is proposed. Faster-R-CNN’s convolution layers are used for feature fusion to solve the problem of insufficient feature extraction for subtle weeny defects. At the same time, Distance Intersection over Union (DIoU) is used to obtain object box that’s more sensitive to object scale to solve the problem of loose defect bounding boxes. The algorithm steps are as follows: Firstly, the belt layer area is segmented. We first segment the shoulder and belt layer areas by vertical projection, and then combine extreme value filtering (EVF) with binarization to segment the belt layer area according to the characteristics of the horizontal cord in the shoulder area. Secondly, construct the defect dataset of the belt layer and enlarge the area proportion of the defect target in the image. Thirdly, the shared convolutional layer of Faster R-CNN is used for front-layer feature fusion to ensure the feature map include higher-level features and higher resolution features. Finally, DIoU is used to get a bounding box that is more scale-sensitive. Experiments were conducted on the defect dataset containing 6316 object boxes for training and 1036 object boxes for test. Compared with the vanilla Faster R-CNN, the false negative rate decreased by 7.79%, the false positive rate decreased by 3.4%, the f-score improved by 5% and the detection box is more fitting for the defect object.
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