Segmentation Method of Magnetic Tile Surface Defects Based on Deep Learning

Yu An, Yinan Lu, Tie-ru Wu
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引用次数: 3

Abstract

Magnet tile is an essential part of various industrial motors, and its performance significantly affects the use of the motor. Various defects such as blowholes, break, cracks, fray, uneven, etc., may appear on the surface of the magnet tile. At present, most of these defects rely on manual visual inspection. To solve the problems of slow speed and low accuracy of segmentation of different defects on the magnetic tile surface, in this paper, we propose a segmentation method of the weighted YOLACT model. The proposed model uses the resnet101 network as the backbone, obtains multi-scale features through the weighted feature pyramid network, and performs two parallel subtasks simultaneously: generating a set of prototype masks and predicting the mask coefficients of each target. In the prediction mask coefficient branch, the residual structure and weights are introduced. Then, masks are generated by linearly combining the prototypes and the mask coefficients to complete the final target segmentation. The experimental results show that the proposed method achieves 43.44/53.44 mask and box mAP on the magnetic tile surface defect dataset, and the segmentation speed reaches 24.40 fps, achieving good segmentation results.
基于深度学习的磁砖表面缺陷分割方法
磁瓦是各种工业电机必不可少的部件,其性能显著影响电机的使用。磁铁瓦表面可能出现气孔、断裂、裂纹、磨损、凹凸不平等各种缺陷。目前,这些缺陷大多依靠人工目视检测。针对磁瓦表面不同缺陷的分割速度慢、精度低的问题,本文提出了一种加权YOLACT模型的分割方法。该模型以resnet101网络为骨干,通过加权特征金字塔网络获取多尺度特征,同时并行执行生成一组原型掩码和预测每个目标的掩码系数两个子任务。在预测掩模系数分支中,引入残差结构和权重。然后,将原型和掩码系数线性组合生成掩码,完成最终的目标分割。实验结果表明,该方法在磁砖表面缺陷数据集上实现了43.44/53.44的mask和box mAP,分割速度达到24.40 fps,取得了较好的分割效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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