基于局部二值模式共现矩阵的人群密度估计

Zhe Wang, Hong Liu, Yueliang Qian, Tao Xu
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引用次数: 46

摘要

人群密度估计对智能视频监控具有重要意义。人们提出了许多基于纹理特征的方法来解决这一问题。现有的算法大多只对整个图像的人群密度进行估计,而忽略了局部区域的人群密度。本文提出了一种基于局部二值模式共现矩阵(LBPCM)的纹理描述符,用于人群密度估计。LBPCM由图像块中的多个重叠单元构成,并将其划分为不同的人群密度水平。LBPCM既描述了LBP的统计特性,又描述了LBP的空间信息,从而充分利用了LBP的局部纹理特征。此外,我们在灰度和梯度图像上都提取了LBPCM,以提高人群密度估计的性能。最后,利用滑动窗口技术检测潜在拥挤区域。实验结果表明,该方法比其他基于纹理的人群密度估计方法具有更好的性能。
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Crowd Density Estimation Based on Local Binary Pattern Co-Occurrence Matrix
Crowd density estimation is important for intelligent video surveillance. Many methods based on texture features have been proposed to solve this problem. Most of the existing algorithms only estimate crowd density on the whole image while ignore crowd density in local region. In this paper, we propose a novel texture descriptor based on Local Binary Pattern (LBP) Co-occurrence Matrix (LBPCM) for crowd density estimation. LBPCM is constructed from several overlapping cells in an image block, which is going to be classified into different crowd density levels. LBPCM describes both the statistical properties and the spatial information of LBP and thus makes full use of LBP for local texture features. Additionally, we both extract LBPCM on gray and gradient images to improve the performance of crowd density estimation. Finally, the sliding window technique is used to detect the potential crowded area. The experimental results show the proposed method has better performance than other texture based crowd density estimation methods.
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