IoT Based on-the-fly Visual Defect Detection in Railway Tracks
Abstract
Railway transportation requires constant inspections and immediate maintenance to ensure public safety. Traditional manual inspections are not only time consuming, and expensive, but the accuracy of defect detection is also subjected to human expertise and efficiency at the time of inspection. Computing and Robotics offer automated IoT based solutions where robots could be deployed on rail-tracks and hard to reach areas, and controlled from control rooms to provide faster inspection. In this paper, a novel automated system based on robotics and visual inspection is proposed. The system provides local image processing while inspecting, cloud storage of information that consist of images of the defected railway tracks only, and robot localization within a range of 3-6 inches. The proposed system utilizes state of the art Machine Learning system and applies it on the images obtained from the tracks in order to classify them as normal or suspicious. Such locations are then marked and more careful inspection can be performed by a dedicated operator with very few locations to inspect (as opposed to the full track).
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