A Convolutional Neural Network with Background Exclusion for Crowd Counting in Non-uniform Population Distribution Scenes

Xinfeng Zhang, Lisha Zuo, Baoqing Yang, Shuhan Chen, Bin Li
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Abstract

The crowd counting in public places is a wildly concerned issue in the fields of public safety, activity planning, and space design. The current crowd counting methods are mainly aimed at the situation that the crowd is full of the whole scene, which cannot be applied to practical applications due to the actual crowd is non-uniform distributed in the scene. The complex background caused by non-uniform population distribution affects the accuracy of crowd counting. Therefore, we propose a convolutional neural network with background exclusion for crowd counting. Firstly, we divide the image into blocks and then use the residual network to determine whether each block contains crowd, to eliminate the clutter background area and avoid the background interference to crowd counting. Secondly, we use the dilated convolution and asymmetric convolution to estimate the crowd density map of image blocks containing crowd. Finally, the crowd density map of all crowd areas is integrated to obtain the crowd counting results of the whole scene. We collect some images of more general scenes, such as the crowd is only a part of the whole image, and construct Non-uniformly Distributed Crowd (NDC 2020) dataset. We conduct experiments on ShanghaiTech datasets and NDC 2020 dataset. Experiment results show that our method is superior to the existing crowd counting methods in the scene of non-uniform population distribution.
基于背景排除的卷积神经网络在非均匀人口分布场景下的人群计数
公共场所人群统计是公共安全、活动规划、空间设计等领域普遍关注的问题。目前的人群计数方法主要针对人群充满整个场景的情况,由于实际人群在场景中的分布不均匀,无法应用于实际应用。人口分布不均匀导致的复杂背景影响了人群计数的准确性。因此,我们提出了一种具有背景排除的卷积神经网络用于人群计数。首先将图像分割成若干块,然后利用残差网络判断每个块是否包含人群,消除背景杂波区域,避免背景对人群计数的干扰。其次,我们利用扩展卷积和非对称卷积来估计包含人群的图像块的人群密度图。最后,对所有人群区域的人群密度图进行整合,得到整个场景的人群计数结果。我们收集了一些更一般场景的图像,例如人群只是整个图像的一部分,并构建了非均匀分布人群(NDC 2020)数据集。我们在上海科技数据集和NDC 2020数据集上进行了实验。实验结果表明,该方法在非均匀人群分布场景下优于现有的人群计数方法。
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