In this work, we describe in detail how Deep Learning and Computer Vision can help to detect fault events of the AirTender system, an aftermarket motorcycle damping system component. One of the most effective ways to monitor the AirTender functioning is to look for oil stains on its surface. Starting from real-time images, AirTender is first detected in the motorbike suspension system, simulated indoor, and then, a binary classifier determines whether AirTender is spilling oil or not. The detection is made with the help of the Yolo5 architecture, whereas the classification is carried out with the help of a suitably designed Convolutional Neural Network, OilNet40. In order to detect oil leaks more clearly, we dilute the oil in AirTender with a fluorescent dye with an excitation wavelength peak of approximately 390 nm. AirTender is then illuminated with suitable UV LEDs. The whole system is an attempt to design a low-cost detection setup. An on-board device, such as a mini-computer, is placed near the suspension system and connected to a full hd camera framing AirTender. The on-board device, through our Neural Network algorithm, is then able to localize and classify AirTender as normally functioning (non-leak image) or anomaly (leak image).
翻译:在这项工作中,我们详细描述深层学习和计算机愿景如何有助于发现AirTender系统(即后期摩托车阻滞系统)的故障事件。监测AirTender功能的最有效方法之一是寻找表面的油污。从实时图像开始,AirTender首先在摩托车悬浮系统中检测,在室内进行模拟,然后用一个二进制分类器确定AirTender是否在漏油。探测是在Yolo5结构的帮助下进行的,而分类是在一个设计得当的革命神经网络(OilNet40)的帮助下进行的。为了更清楚地发现石油泄漏,我们用荧光染色剂稀释空气中油,其发色波长峰值约为390纳米。然后,AirTender用适当的紫外线显示适当的UVLED。整个系统试图设计一个低成本的探测装置。一个机载装置,例如微型计算机,在安装在悬浮系统附近,并且与一个完整的Heal-Neal-Ne-NC-CAirnet的摄像机机机机机正常运行。A-Cal-Cal-Cal-Cal-Cal-Airendal-Cal-Cal-Cal-Cal-Cal-Cal-Cal-Cal-Cal-Airal-Cal-Cal-Cal-Cal-Amberaction-Air-Amber-Amber-Amber-Amber-Amber-Amber-AV-AV-AV-AV-AV-AVD-AVD-AV-AVD-AD-AVD-AD-AVD-AD-AD-C-AVD-AV-AVD-AV-AD-AV-AVD-AV-AV-AV-AV-AV-AV-AD-AD-AV-AV-AV-SDAVD-AVD-AVD-AVD-AV-AVD-AV-AV-S-A-A-AV-AD-S-S-AV-AV-AD-AD-AD-AD-A-A-A-AD-S-