Crowd semantic segmentation based on spatial-temporal dynamics

Jijia Li, Hua Yang, Shuang Wu
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引用次数: 5

Abstract

Crowd semantic segmentation is supposed to not only accurately segment the crowd into groups but also describe them by semantic properties. We define a group as a set of members sharing common spatial-temporal dynamics, i.e., motion consistency and distribution homogeneity. This paper proposes a novel crowd semantic segmentation method, termed as joint spatial-temporal semantic segmentation, which leverages the temporal motion characteristics and spatial distribution information of crowd. We first conduct temporal motion grouping and spatial distribution grouping according to motion consistency and distribution homogeneity respectively. Then, a a joint semantic segmentation algorithm is employed to combine the motion and distribution groups into semantic groups. States of these groups are described in terms of motion pattern and density level. Experiments show that our proposed method is effective to obtain favorable segmentation with semantic descriptions.
基于时空动态的人群语义分割
人群语义分割不仅要对人群进行准确的分组,而且要根据语义属性对人群进行描述。我们将群体定义为一组共享共同时空动态的成员,即运动一致性和分布均匀性。本文利用人群的时间运动特征和空间分布信息,提出了一种新的人群语义分割方法——时空联合语义分割方法。首先根据运动一致性和分布均匀性分别进行时间运动分组和空间分布分组。然后,采用联合语义分割算法将运动组和分布组合并为语义组。这些群体的状态用运动模式和密度水平来描述。实验结果表明,本文提出的方法能够有效地实现基于语义描述的图像分割。
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