人群计数的标记点过程

Weina Ge, R. Collins
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引用次数: 263

摘要

提出了一种贝叶斯标记点过程(MPP)模型,用于拥挤场景中人群的检测和计数。该模型将控制个体数量和位置的空间随机过程与选择体型的条件标记过程相结合。我们通过估计伯努利形状原型的混合以及描述这些形状在任何给定图像位置的方向和缩放的外在形状分布,从训练视频中自动学习标记(形状)过程。利用可逆跳跃马尔可夫链蒙特卡罗框架有效地搜索形状的最大后验配置,从而估计场景中每个人的数量、位置和姿势。人群计数的定量结果提出了两个公开可用的数据集与已知的地面真相。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Marked point processes for crowd counting
A Bayesian marked point process (MPP) model is developed to detect and count people in crowded scenes. The model couples a spatial stochastic process governing number and placement of individuals with a conditional mark process for selecting body shape. We automatically learn the mark (shape) process from training video by estimating a mixture of Bernoulli shape prototypes along with an extrinsic shape distribution describing the orientation and scaling of these shapes for any given image location. The reversible jump Markov Chain Monte Carlo framework is used to efficiently search for the maximum a posteriori configuration of shapes, leading to an estimate of the count, location and pose of each person in the scene. Quantitative results of crowd counting are presented for two publicly available datasets with known ground truth.
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