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Traffic Danger Recognition With Surveillance Cameras Without Training Data

机译:在没有培训数据的情况下使用监控摄像机的交通危险识别

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We propose a traffic danger recognition model that works with arbitrary traffic surveillance cameras to identify and predict car crashes. There are too many cameras to monitor manually. Therefore, we developed a model to predict and identify car crashes from surveillance cameras based on a 3D reconstruction of the road plane and prediction of trajectories. For normal traffic, it supports real-time proactive safety checks of speeds and distances between vehicles to provide insights about possible high-risk areas. We achieve good prediction and recognition of car crashes without using any labeled training data of crashes. Experiments on the BrnoCompSpeed dataset show that our model can accurately monitor the road, with mean errors of 1.80% for distance measurement, 2.77 km/h for speed measurement, 0.24 m for car position prediction, and 2.53 km/h for speed prediction.
机译:我们提出了一种交通危险识别模型,适用于任意流量监控摄像机来识别和预测车祸。手动监测太多摄像头。因此,我们开发了一种模型来预测和识别基于道路平面的3D重建和轨迹预测的监视摄像机的车辆撞车。对于正常流量,它支持车辆之间的速度和距离的实时主动安全检查,以提供对可能的高风险区域的见解。我们在不使用崩溃的任何标记训练数据的情况下实现了对汽车崩溃的良好预测和识别。 Brnocompspeed DataSet上的实验表明,我们的模型可以准确地监控道路,距离测量的平均误差为1.80 %,速度测量为2.77 km / h,用于汽车位置预测为0.24米,速度预测为2.53 km / h。

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