Unsupervised Bayesian Detection of Independent Motion in Crowds

G. Brostow, R. Cipolla
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引用次数: 461

Abstract

While crowds of various subjects may offer applicationspecific cues to detect individuals, we demonstrate that for the general case, motion itself contains more information than previously exploited. This paper describes an unsupervised data driven Bayesian clustering algorithm which has detection of individual entities as its primary goal. We track simple image features and probabilistically group them into clusters representing independently moving entities. The numbers of clusters and the grouping of constituent features are determined without supervised learning or any subject-specific model. The new approach is instead, that space-time proximity and trajectory coherence through image space are used as the only probabilistic criteria for clustering. An important contribution of this work is how these criteria are used to perform a one-shot data association without iterating through combinatorial hypotheses of cluster assignments. Our proposed general detection algorithm can be augmented with subject-specific filtering, but is shown to already be effective at detecting individual entities in crowds of people, insects, and animals. This paper and the associated video examine the implementation and experiments of our motion clustering framework.
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群体中独立运动的无监督贝叶斯检测
虽然不同对象的群体可能会提供特定于应用程序的线索来检测个体,但我们证明,对于一般情况,运动本身包含的信息比以前所利用的更多。本文描述了一种以检测单个实体为主要目标的无监督数据驱动的贝叶斯聚类算法。我们跟踪简单的图像特征,并概率地将它们分组到代表独立移动实体的簇中。集群的数量和组成特征的分组是在没有监督学习或任何特定主题模型的情况下确定的。新的方法是将时空接近性和通过图像空间的轨迹相干性作为聚类的唯一概率标准。这项工作的一个重要贡献是如何使用这些标准来执行一次性数据关联,而不需要迭代聚类分配的组合假设。我们提出的通用检测算法可以通过特定主题的过滤来增强,但已经被证明在检测人群、昆虫和动物中的个体实体方面是有效的。本文和相关视频研究了我们的运动聚类框架的实现和实验。
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