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Real-time Vehicle Status Perception Without Frame-based Segmentation for Smart Camera Network

机译:实时车辆状态感知没有基于帧的智能相机网络的分割

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Nowadays camera network plays an important role in the Intelligent Transportation System (ITS), and due to the weak computing ability of smart devices in the camera network, collecting traffic status in real time is one of the critical tasks in this field. A common strategy for traffic status collecting is first to form the trajectories of vehicles and then to measure interested indicators. To address this problem, we present a real-time vehicle status perception approach, which directly extracts vehicle status from our proposed novel video feature, temporal component-weight. Specifically, temporal component-weight is calculated based on a sampling of the whole frame. Also, a hybrid model is proposed to handle crowded situations. We test our approaches in surveillance sequences, and the results show that the proposed approach can effectively collect the vehicle status, including number, relative location, and relative speed.
机译:如今相机网络在智能交通系统(其)中起着重要作用,并且由于相机网络中的智能设备的计算能力较弱,实时收集流量状态是该字段中的关键任务之一。交通状态收集的常见策略首先是形成车辆的轨迹,然后衡量感兴趣的指标。为了解决这个问题,我们提出了一个实时车辆状态感知方法,它直接从我们所提出的新型视频特征,时间分量重量提取车辆状态。具体地,基于整个帧的采样来计算时间分量重量。此外,提出了一种混合模型来处理拥挤的情况。我们在监控序列中测试我们的方法,结果表明,该方法可以有效地收集车辆状态,包括数量,相对位置和相对速度。

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