Crowd counting by feature-level fusion of appearance and fluid force

Dingxin Ma, Xuguang Zhang, Hui Yu
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Abstract

Crowd counting is a research hotspot for video surveillance due to its great significance to public safety. The accuracy of crowd counting depends on whether the extracted features can effectively map the number of pedestrians. This paper focuses on this problem by proposing a crowd counting method based on the expression of image appearance and fluid forces. Firstly, Horn-Schunck optical flow method is used to extract the motion crowd. Secondly, based on the motion information of crowd, pedestrians in different directions are distinguished by the k-means clustering algorithm. Then, image appearance features and fluid features are extracted to describe different motion crowd. The image appearance features are gained by calculating the foreground area, foreground perimeter and edge length. The gravity, inertia force, pressure and viscous force are taken as the fluid features. Finally, two kinds of features are combined as the final descriptor and then least squares regression is used to fit features and the number of pedestrians. The experimental results demonstrate that the proposed crowd counting method acquires satisfied performance and outperforms other methods in terms of the mean absolute error and mean square error.
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基于特征级外观和流体力融合的人群计数
人群统计对公共安全具有重要意义,是视频监控领域的研究热点。人群计数的准确性取决于提取的特征能否有效映射出行人的数量。本文针对这一问题,提出了一种基于图像外观和流体力表达的人群计数方法。首先,采用Horn-Schunck光流法提取运动人群;其次,基于人群的运动信息,采用k-means聚类算法区分不同方向的行人;然后提取图像的外观特征和流体特征来描述不同的运动人群;通过计算前景面积、前景周长和边缘长度,得到图像的外观特征。将重力、惯性力、压力和粘性力作为流体特征。最后,将两类特征组合为最终描述符,然后使用最小二乘回归对特征和行人数量进行拟合。实验结果表明,本文提出的人群计数方法取得了满意的性能,在平均绝对误差和均方误差方面优于其他方法。
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