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Training-free Monocular 3D Event Detection System for Traffic Surveillance

机译:无培训单目3D事件检测系统,用于交通监测

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We focus on the problem of detecting traffic events in a surveillance scenario, including the detection of both vehicle actions and traffic collisions. Existing event detection systems are mostly learning-based and have achieved convincing performance when a large amount of training data is available. However, in real-world scenarios, collecting sufficient labeled training data is expensive and sometimes impossible (e.g. for traffic collision detection). Moreover, the conventional 2D representation of surveillance views is easily affected by occlusions and different camera views in nature. To deal with the aforementioned problems, in this paper, we propose a training-free monocular 3D event detection system for traffic surveillance. Our system firstly projects the vehicles into the 3D Euclidean space and estimates their kinematic states. Then we develop multiple simple yet effective ways to identify the events based on the kinematic patterns, which need no further training. Consequently, our system is robust to the occlusions and the viewpoint changes. Exclusive experiments report the superior result of our method on large-scale real-world surveillance datasets, which validates the effectiveness of our proposed system. The demonstration videos of our system are available online1.1https://drive.google.com/drive/folders/118tdbpWhfJC-7tT9whzEsHPWjx6hdEi7?usp=sharing
机译:我们专注于检测监控场景中的交通事件的问题,包括检测车辆动作和交通碰撞。现有事件检测系统主要是基于学习的,并且在有大量培训数据可用时实现了令人信服的性能。然而,在现实世界的情景中,收集足够的标记训练数据是昂贵的,有时不可能(例如,用于交通碰撞检测)。此外,传统的监视视图的2D表示容易受到闭塞和不同的相机视图中的影响。在本文中处理上述问题,我们提出了一种无培训的单目3D事件检测系统,用于交通监测。我们的系统首先将车辆投射到3D欧几里德空间中,并估计其运动状态。然后,我们开发多种简单但有效的方法来识别基于运动模式的事件,无需进一步培训。因此,我们的系统对闭塞和视点变化很强大。独家实验报告了我们对大型现实世界监控数据集的方法的卓越结果,验证了我们所提出的系统的有效性。我们系统的演示视频可在线获取 1 1 https://drive.google.com/drive/folders/118tdbpwhfjc-7tt9whzhehpwjx6hde7?usp=sharing.

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