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Crossing-Line Crowd Counting with Two-Phase Deep Neural Networks

机译:交叉线人群与两相深神经网络计数

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In this paper, we propose a deep Convolutional Neural Network (CNN) for counting the number of people across a line-of-interest (LOI) in surveillance videos. It is a challenging problem and has many potential applications. Observing the limitations of temporal slices used by state-of-the-art LOI crowd counting methods, our proposed CNN directly estimates the crowd counts with pairs of video frames as inputs and is trained with pixel-level supervision maps. Such rich supervision information helps our CNN learn more discriminative feature representations. A two-phase training scheme is adopted, which decomposes the original counting problem into two easier sub-problems, estimating crowd density map and estimating crowd velocity map. Learning to solve the sub-problems provides a good initial point for our CNN model, which is then fine-tuned to solve the original counting problem. A new dataset with pedestrian trajectory annotations is introduced for evaluating LOI crowd counting methods and has more annotations than any existing one. Our extensive experiments show that our proposed method is robust to variations of crowd density, crowd velocity, and directions of the LOI, and outperforms state-of-the-art LOI counting methods.
机译:在本文中,我们提出了一个深度卷积神经网络(CNN),用于在监控视频中计算患有兴趣线(LOI)的人数。这是一个具有挑战性的问题,并且具有许多潜在的应用。观察最先进的LOI人群计数方法使用的时间片的局限性,我们提出的CNN直接估计具有作为输入的视频帧对的人群计数,并用像素级监控映射训练。这种丰富的监督信息有助于我们的CNN了解更多歧视特征表示。采用了两阶段培训方案,将原始计数问题分解为两个更容易的子问题,估计人群密度图和估计人群速度图。学习解决子问题为我们的CNN模型提供了一个很好的初始点,然后进行微调以解决原始计数问题。引入了具有人行轨迹注释的新数据集,用于评估LOI人群计数方法,并且具有比任何现有的涂布更多的注释。我们广泛的实验表明,我们所提出的方法对LOI的人群密度,人群速度和方向的变化具有鲁棒性,并且优于最先进的LOI计数方法。

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