Finding Group Interactions in Social Clutter

Ruonan Li, Parker Porfilio, Todd E. Zickler
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引用次数: 20

Abstract

We consider the problem of finding distinctive social interactions involving groups of agents embedded in larger social gatherings. Given a pre-defined gallery of short exemplar interaction videos, and a long input video of a large gathering (with approximately-tracked agents), we identify within the gathering small sub-groups of agents exhibiting social interactions that resemble those in the exemplars. The participants of each detected group interaction are localized in space, the extent of their interaction is localized in time, and when the gallery of exemplars is annotated with group-interaction categories, each detected interaction is classified into one of the pre-defined categories. Our approach represents group behaviors by dichotomous collections of descriptors for (a) individual actions, and (b) pair-wise interactions, and it includes efficient algorithms for optimally distinguishing participants from by-standers in every temporal unit and for temporally localizing the extent of the group interaction. Most importantly, the method is generic and can be applied whenever numerous interacting agents can be approximately tracked over time. We evaluate the approach using three different video collections, two that involve humans and one that involves mice.
在社会混乱中发现群体互动
我们考虑的问题是,在更大的社会聚会中,如何找到包含代理群体的独特社会互动。给定一个预定义的短示例交互视频库,以及一个大型集合(带有近似跟踪的代理)的长输入视频,我们在集合中识别出展示与示例中类似的社会交互的代理的小子组。每个检测到的群体交互的参与者在空间上是局部的,他们的交互程度在时间上是局部的,当样本库中标注了群体交互类别时,每个检测到的交互被分类到一个预定义的类别中。我们的方法通过(a)个体行为和(b)成对交互的描述符的二分类集合来表示群体行为,它包括有效的算法,可以在每个时间单元中最佳地区分参与者和旁观者,并在时间上定位群体交互的程度。最重要的是,该方法是通用的,可以应用于任何可以随时间大致跟踪许多相互作用的代理的情况。我们使用三个不同的视频集来评估这种方法,其中两个涉及人类,一个涉及老鼠。
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