Conversational Group Detection Based on Social Context Using Graph Clustering Algorithm

Shoichi Inaba, Y. Aoki
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引用次数: 14

Abstract

With the development of single-person analysis in computer vision, social group analysis has received growing attention as the next area of research. In particular, group detection has been actively studied as the first step of social analysis. Here, group means an F-formation, that is, a spatial organization of people gathered for conversation. Popular group detection methods are based on coincidences in the visual attention field that are calculated from the position and body orientation of the individuals in the group. However, most previous studies have assumed that each member has the same visual attention field, and they do not consider changes in the scene over time. In this paper, we present a robust method for detection of time-varying F-formations in social space, its visual attention field model is based on the local environment. We present the results of an experiment that uses a dataset of multiple scenes, an analysis of these results validates the advantages of our method.
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基于社会语境的会话组检测——基于图聚类算法
随着计算机视觉中单人分析的发展,社会群体分析作为下一个研究领域受到越来越多的关注。特别是,群体检测作为社会分析的第一步被积极研究。在这里,group指的是f字形,即人们聚集在一起进行交谈的空间组织。流行的群体检测方法是基于从群体中个体的位置和身体方向计算的视觉注意领域的巧合。然而,大多数先前的研究都假设每个成员都有相同的视觉注意领域,并且他们没有考虑场景随时间的变化。本文提出了一种基于局部环境的视觉注意场模型,用于社会空间中时变f形的鲁棒检测。我们给出了一个使用多个场景数据集的实验结果,对这些结果的分析验证了我们的方法的优势。
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