基于多特征分类和多元回归模型的人群密度估计

A. Gad, A. Hamad, K. M. Amin
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引用次数: 6

摘要

为了克服线性问题,提高计数预测精度,提出了一种新的单摄像机自动人群密度估计方法。为了克服线性问题,从分割的前景区域中提取包括分割区域属性、纹理、边缘和SIFT关键点的组合特征。这些特征被归一化以解决透视失真问题。利用完整的特征集和部分特征集训练多个回归模型来预测每个区域的人群密度,提高预测精度。此外,采用交叉验证技术对训练数据集和测试数据集进行选择,以提高预测精度。特征的类别是根据一组指标来排序的,这些指标反映了它们对所使用的每个回归模型的稳健性。使用UCSD人群数据集提供的地面真实数据,实验结果表明,所提出的人群密度估计方法比以前的方法具有更强的鲁棒性,并且提供了更高的人群计数预测精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Crowd density estimation using multiple features categories and multiple regression models
This paper proposes a new single camera automatic crowd density estimation method for overcoming the linearity problem and enhancing the counting prediction accuracy. For overcoming the linearity problem, a combination of features including segmented regions properties, texture, edge, and SIFT keypoints are extracted from the segmented foreground regions. These features are normalized to solve the perspective distortion problem. The complete feature set and a partial of this set are utilized to train multiple regression models to predict the crowd density per region and enhance the prediction accuracy. Moreover, the cross-validation technique is used to select the training and testing datasets in order to increase the prediction accuracy. Categories of features are ranked based on a set of metrics reflecting their robustness with each regression model used. Using the ground truth data provided by the UCSD crowd dataset, the experimental results show that the proposed crowd density estimation method are more robust and provide crowd counting prediction with higher accuracy than previous methods.
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