Research on the multi-scale network crowd density estimation algorithm based on the attention mechanism

Li Wang, Huailin Zhao, Yaoyao Li
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引用次数: 1

Abstract

Whether it is daily urban traffic or some special gatherings, crowd gathering scenes are common, and it is becoming more and more important to calculate the number of people in terms of safety and planning. Calculating the number of people in high-density crowd is a very difficult challenge due to the diversity of ways people appear in crowded scenes. This paper proposes a multi-branch network structure that combines the dilated convolution and attention mechanism. By combining dilated convolution, the context information of different scales of the crowd image are extracted. The attention mechanism is introduced to make the network pay more attention to the position of the head of the crowd and suppress the background noise, so as to obtain a higher quality density map. Then add all the pixels in the density map to get the total number of people. Through a large number of experiments, this network can better provide effective crowd density estimation features and improve the dissimilarity of density map distribution, which has better robustness.
基于注意机制的多尺度网络人群密度估计算法研究
无论是日常的城市交通,还是一些特殊的聚会,人群聚集的场景都是常见的,从安全和规划的角度来看,人数的计算变得越来越重要。计算高密度人群中的人数是一个非常困难的挑战,因为人们在拥挤的场景中出现的方式是多种多样的。本文提出了一种结合扩展卷积和注意机制的多分支网络结构。结合展开卷积,提取不同尺度人群图像的上下文信息。引入注意机制,使网络更加关注人群头部的位置,抑制背景噪声,从而获得更高质量的密度图。然后将密度图中的所有像素相加,得到总人数。通过大量实验,该网络能更好地提供有效的人群密度估计特征,改善密度图分布的不相似性,具有较好的鲁棒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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