One-stage object detection networks for inspecting the surface defects of magnetic tiles

Jiaqi Wei, Peiyuan Zhu, Xiang Qian, Shidong Zhu
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引用次数: 4

Abstract

One of the core components of the permanent magnet motor is magnetic tile and surface defect detection of it is of vital importance to ensure the performance and service life of the motor. This paper employs a deep learning method based on computer vision to detect the surface defects on magnetic tiles in order to replace manual inspection and increase productivity. Considering the real-time requirements of the industrial site, three designed one-stage object detection networks of different depth are compared on our Inner-R surface dataset of magnetic tiles. The whole image is input into the networks which regard the object detection as a regression problem and output the value of class probability and position coordinate of the object. This approach can detect more than one defects on the same image as well as the location of defects which provides advantages to find the number of defects per class and improve the manufacturing process. As the result shows, the YOLOv3 network is the most applicable one in this magnetic tile surface defect detection problem and the detection time is less than 23 ms, which is an eye-catching result.
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磁瓦表面缺陷检测的一级目标检测网络
永磁电机的核心部件之一是磁瓦,其表面缺陷检测对保证电机的性能和使用寿命至关重要。本文采用基于计算机视觉的深度学习方法对磁砖表面缺陷进行检测,以取代人工检测,提高生产率。考虑到工业现场的实时性要求,在我们的Inner-R磁砖表面数据集上,对设计的三种不同深度的单阶段目标检测网络进行了比较。将整幅图像输入到网络中,将目标检测作为一个回归问题,输出目标的类概率值和位置坐标。该方法可以在同一图像上检测到多个缺陷以及缺陷的位置,为确定每一类缺陷的数量和改进制造工艺提供了优势。结果表明,YOLOv3网络最适用于本磁瓦表面缺陷检测问题,检测时间小于23 ms,结果引人注目。
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