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Improving the efficiency and effectiveness of railcar safety appliance inspection using machine vision technology

机译:使用机器视觉技术提高铁路安全设备检查的效率和有效性

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Before a train departs a yard, many aspects of the freight cars and locomotives undergo inspection, including their safety appliances. Safety appliances are handholds, ladders and other objects that serve as the interface between humans and railcars during transportation. Federal safety rules govern the design and condition of safety appliances. The current car inspection process is primarily visual making it laborious, redundant, and generally lacking of memory. There exists a potential to increase both the effectiveness and efficiency of safety appliance inspections by utilizing machine vision technology to enhance the railcar inspection process. Machine vision consists of capturing digital video and using algorithms capable of detecting and analyzing the particular objects or patterns of interest. Computer algorithms can objectively inspect railcars without tiring or becoming distracted and can also focus on certain parts of the railcar not easily seen by an inspector on the ground. Thus far, algorithms have been developed that can detect deformed ladders, handholds, and brake wheels on open-top gondolas and hoppers. Next, visual learning will be employed to teach the algorithm the differences between Federal Railroad Administration (FRA) safety appliance defects and other types of deformation not requiring a car to be bad ordered. The final product will be a wayside inspection system capable of detecting safety appliance defects on passing railcars.
机译:在火车离开院子之前,对货车和机车的许多方面进行了检查,包括其安全装置。安全用具是手持设备,梯子和其他物体,可在运输过程中充当人与车之间的接口。联邦安全规则支配着安全设备的设计和状况。当前的汽车检查过程主要是视觉检查,使其工作繁琐,多余并且通常缺乏存储空间。通过利用机器视觉技术来增强铁路车辆检查过程,有可能提高安全设备检查的有效性和效率。机器视觉包括捕获数字视频并使用能够检测和分析感兴趣的特定对象或图案的算法。计算机算法可以客观地检查铁路车辆而不会产生疲劳或分散注意力,并且还可以专注于地面检查人员不容易看到的铁路车辆的某些部分。到目前为止,已经开发了可以检测敞开式吊船和料斗上的变形的梯子,手柄和制动轮的算法。接下来,将使用视觉学习来教算法,以区别联邦铁路管理局(FRA)安全设备缺陷与其他类型的变形之间的差异,这些变形不需要使汽车秩序井然。最终产品将是一种路边检查系统,能够检测经过的有轨电车上的安全设备缺陷。

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