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Arbitrary Perspective Crowd Counting via Multi Convolutional Kernels

机译:通过多卷积核对任意视角人群进行计数

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Cross-scene crowd counting plays a more and more important role in intelligent scene monitoring, and it is very important in the safety of personnel and the scene scheduling. The traditional estimation of crowd counting is mainly dependent on the simple background of scenes, which is not conducive to the complex background. To address this problem, in this paper, we propose a multi convolutional kernels net for crowd counting, which discards the subjectivity and the occasionally of the traditional manual feature extraction. Firstly, we label dataset for convolution output features. Then we use the fully convolutional network to create the density map at the end of the network with multi convolutional kernels. Finally, we perform integral regression on density maps to estimate the crowd counting. The dataset that we used is a set of publicly available datasets, which are the Shanghaitech dataset, the UCF_CC_50 dataset and the UCSD dataset. The experiments based on video images show that the proposed method is more effective than traditional methods in terms of robustness and accuracy.
机译:跨场景人群计数在智能场景监控中起着越来越重要的作用,对于人员安全和场景调度非常重要。传统的人群计数估计主要取决于场景的简单背景,不利于复杂的背景。为了解决这个问题,在本文中,我们提出了一种用于人群计数的多卷积核网络,该网络摒弃了主观性,并偶尔抛弃了传统的手动特征提取。首先,我们为卷积输出特征标记数据集。然后,我们使用全卷积网络在具有多个卷积内核的网络末端创建密度图。最后,我们在密度图上执行积分回归以估计人群计数。我们使用的数据集是一组公开可用的数据集,分别是Shanghaitech数据集,UCF_CC_50数据集和UCSD数据集。基于视频图像的实验表明,该方法在鲁棒性和准确性上比传统方法更为有效。

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