用于高密度人群计数的多特征卷积神经网络

Songchenchen Gong, E. Bourennane, Xuecan Yang
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引用次数: 0

摘要

人群计数任务涉及到安全问题,所以现在越来越多的人关注它。目前,人口统计最困难的问题在于:如何使模型在人头重叠等人口密集区域更精细地区分人头特征,以及如何在人口密度大范围的图像中找到小尺度的局部人头特征。面对这些挑战,我们提出了一种多特征卷积神经网络网络,称为MFNet。它的目的是在高密度人群场景中获得高质量的密度图,同时完成人群的计数和估计任务。在人群统计方面,我们使用多个信息源,即HOG, LBP和CANNY。使用支持向量机(SVM),每个源不仅为我们提供了单独的计数估计,而且还提供了其他统计度量。为了有效地解决人群计数中尺度相关特征的提取问题,我们集成了卷积神经网络体系结构MFNet。通过比较多个数据集的实验结果,MFNet方法优于其他总体计数方法。
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MFNet: Multi-feature convolutional neural network for high-density crowd counting
The crowd counting task involves the issue of security, so now more and more people are concerned about it. At present, the most difficult problem of population counting consists in: how to make the model distinguish human head features more finely in the densely populated area, such as head overlap and how to find a small-scale local head feature in an image with a wide range of population density. Facing these challenges, we propose a network for multiple feature convolutional neural network, which is called MFNet. It aims to get high-quality density maps in the high-density crowd scene, and at the same time to perform the task of the count and estimation of the crowd. In terms of crowd counting, we use multiple sources of information, that is HOG, LBP and CANNY. With the support vector machine (SVM), each source provides us not merely a separate count estimation, but other statistical measures. In order to effectively solve the problem of extracting scale-related features in crowd counting, we have integrated MFNet, a convolutional neural network architecture. By comparing the experimental results of multiple data sets, MFNet is superior to other population counting methods.
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