稀疏和中等拥挤场景中基于条件标记点过程的人群计数

Yongsang Yoon, Jeonghwan Gwak, Jong-In Song, M. Jeon
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引用次数: 4

摘要

人群密度估计用于计算人数,或用于确定个人、人群或人群之间的相互作用一直是一个具有挑战性的问题,因为在(高度)拥挤的情况下,人们可能会被其他人遮挡。这些技术的成功发展具有多种目的,例如通过计算流动人口或根据确定人群相互作用对事件类型进行分类,适当地重新分配有限的资源(例如,公共交通)。虽然现有的计数方法大多基于直接将特征映射到相应的类标签的回归模型,但我们提出了一种基于条件标记点过程(CMPP)的方法,即使在适度拥挤的场景中也可以对个体进行计数。我们使用伯努利形状的混合,这是一种随机模型,从具有外部形状分布的训练集估计,确定输入图像中给定位置的形状大小,以计算不同类型场景中的适当人数。实验在著名的公共数据集PETS2009上进行。实验结果表明,该方法可以替代传统的基于mpp的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Conditional marked point process-based crowd counting in sparsely and moderately crowded scenes
Crowd density estimation for counting persons, or for determining interactions among persons, groups of people, or crowds has been a challenging problem since persons can be occluded by other persons in (highly) crowded situations. The successful development of such techniques has diverse purposes, such as reassigning limited resources (e.g., public transportation) properly by counting floating population or categorizing the type of events based on the identification of crowd interactions. While existing counting approaches are mostly based on regression models that directly map features to the corresponding class labels, we propose a conditional marked point process (CMPP)-based approach to count individual persons even in moderately crowded scenes. We use a mixture of Bernoulli shape, which is a stochastic model, estimated from the training set with extrinsic shape distribution that determines the size of a shape for the given location in an input image to count the proper number of persons in different types of scenes. The experiment was carried out on PETS2009 which is a well-known public dataset. It was concluded from the experimental results that the proposed approach can be an alternative to the conventional MPP-based approaches.
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