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Bearing fault detection method based on statistical analysis and KL distance

机译:基于统计分析和KL距离的轴承故障检测方法

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摘要

The final step of the bearing production line constitutes the inspection of the bearing which is mostly performed by visual inspection. Three groups of bearings namely, properly assembled samples, conversely assembled rubber seal and samples where rubber seals were missing are classified using visible range images of these samples. According to the proposed method, extraction of seal regions from the bearing images using circular Hough transform is followed by a higher-order statistical analysis to finalize the classification. Experimental results show that this system may be employed as an assistive tool for bearing inspectors.
机译:轴承生产线的最后一步是对轴承的检查,这主要是通过目测进行的。使用这些样品的可见范围图像对三组轴承进行分类,即正确组装的样品,相反组装的橡胶密封件和缺少橡胶密封件的样品。根据提出的方法,使用圆形霍夫变换从轴承图像中提取密封区域,然后进行高阶统计分析以最终完成分类。实验结果表明,该系统可作为轴承检查员的辅助工具。

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