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Using Traffic Light Signal to Enhance Intersection Foreground Detection Based on Video Sensor Networks

机译:基于视频传感器网络的交通信号灯增强交叉口前景检测

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Foreground detection plays an important role in the traffic surveillance applications, especially in urban intersections. Background subtraction is an efficient approach to segment the background and foreground with static cameras from video sensor networks. But when modelling the background, most statistical techniques adjust the learning rate only based on the changes from video sequences, which is a crucial parameter controlling the updating speed. This causes a slow adaptation to sudden environmental changes. For example, a stopped car fuses into background before moving again, and it lowers the segmentation performance. This paper proposes an efficient way to address the problem by accounting for the physical world signal in traffic junctions. It assigns an adaptive learning rate to each pixel by integrating traffic light signal obtained from sensor networks.Combined with abundant physical world signals, background subtraction method is able to adapt itself to the outside world changes instantly. We test our approach in real urban traffic intersection; experimental results show that the new method increases the accuracy of detection and has a promising future.
机译:前景检测在交通监控应用中,尤其是在城市交叉路口中,起着重要的作用。背景扣除是一种利用视频传感器网络中的静态摄像机分割背景和前景的有效方法。但是,在对背景进行建模时,大多数统计技术仅根据视频序列的变化来调整学习率,这是控制更新速度的关键参数。这导致对突然的环境变化的缓慢适应。例如,停下来的汽车在再次移动之前会融合到背景中,从而降低了分割效果。本文提出了一种通过解决交通路口的物理世界信号来解决该问题的有效方法。它通过整合从传感器网络获得的交通信号灯,为每个像素分配自适应学习率。背景减法与丰富的物理世界信号相结合,能够立即适应外界变化。我们在真实的城市交通路口测试我们的方法;实验结果表明,该新方法提高了检测的准确性,具有广阔的应用前景。

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