基于U-Net的目标跟踪改进车辆事故检测

Kirsnaragavan Arudpiragasam, Taraka Rama Krishna Kanth Kannuri, Klaus Schwarz, Michael Hartmann, Reiner Creutzburg
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引用次数: 0

摘要

在过去的十年里,研究人员提出了许多发现异常的方法。然而,目前还没有研究将帧重建与目标跟踪(OT)相结合来检测异常。因此,本研究的重点是使用OT和U-Net相结合的方法进行道路事故检测,并结合诸如跳过、跳过残余和注意连接等变体。U-Net算法用于使用UFC-Crime数据集重建图像。此外,YOLOV4和DeepSort用于帧内的目标检测和跟踪。最后,利用卡尔曼滤波和U-Net模型确定了马氏距离和重建误差。
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Improvement of vehicles accident detection using object tracking with U-Net
Over the past decade, researchers have suggested many methods to find anomalies. However, none of the studies has applied frame reconstruction with Object Tracking (OT) to detect anomalies. Therefore, this study focuses on road accident detection using a combination of OT and U-Net associated with variants such as skip, skip residual and attention connections. The U-Net algorithm is developed for reconstructing the images using the UFC-Crime dataset. Furthermore, YOLOV4 and DeepSort are used for object detection and tracking within the frames. Finally, the Mahalanobis distance and the reconstruction error (RCE) are determined using a Kalman filter and the U-Net model.
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