School of Science, Beijing Jiaotong University; Beijing 100044, China.
Infrastructure Inspection Research Institute, China Academy of Railway Sciences Corporation Limited. Beijing 100081, China.
Sensors (Basel). 2020 Mar 2;20(5):1367. doi: 10.3390/s20051367.
At present, the method of two-dimensional image recognition is mainly used to detect the abnormal fastener in the rail-track inspection system. However, the too-tight-or-too-loose fastener condition may cause the clip of the fastener to break or loose due to the high frequency vibration shock, which is difficult to detect from the two-dimensional image. In this practical application background, 3D visual detection technology provides a feasible solution. In this paper, we propose a fundamental multi-source visual data detection method, as well as an accurate and robust fastener location and nut or bolt segmentation algorithm. By combining two-dimensional intensity information and three-dimensional depth information generated by the projection of line structural light, the locating of nut or bolt position and accurate perception of height information can be realized in the dynamic running environment of railway. The experimental results show that the static measurement accuracy in the vertical direction using the structural light vision sensor is 0.1 mm under the laboratory condition, and the dynamic measurement accuracy is 0.5 mm under the dynamic train running environment. We use dynamic template matching algorithm to locate fasteners from 2D intensity map, which achieves 99.4% accuracy, then use the watershed algorithm to segment the nut and bolt from the corresponding depth image of located fastener. Finally, the 3D shape of the nut and bolt is analyzed to determine whether the nut or bolt height meets the local statistical threshold requirements, so as to detect the hidden danger of railway transportation caused by too loose or too tight fasteners.
目前,轨道检测系统中主要采用二维图像识别的方法来检测异常的紧固件。然而,由于高频振动冲击,过紧或过松的紧固件条件可能导致紧固件的夹子断裂或松动,这很难从二维图像中检测到。在这种实际应用背景下,3D 视觉检测技术提供了一个可行的解决方案。在本文中,我们提出了一种基本的多源视觉数据检测方法,以及一种准确和鲁棒的紧固件定位和螺母或螺栓分割算法。通过结合二维强度信息和由线结构光投影生成的三维深度信息,可以在铁路的动态运行环境中实现螺母或螺栓位置的定位和高度信息的精确感知。实验结果表明,结构光视觉传感器在实验室条件下的垂直方向静态测量精度为 0.1mm,在动态列车运行环境下的动态测量精度为 0.5mm。我们使用动态模板匹配算法从 2D 强度图中定位紧固件,其准确率达到 99.4%,然后使用分水岭算法从定位紧固件的相应深度图像中分割螺母和螺栓。最后,分析螺母和螺栓的 3D 形状,以确定螺母或螺栓的高度是否满足局部统计阈值要求,从而检测出由紧固件过紧或过松引起的铁路运输隐患。