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From Ego to Nos-Vision: Detecting Social Relationships in First-Person Views

机译:从自我到无视:从第一人称视角发现社会关系

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In this paper we present a novel approach to detect groups in ego-vision scenarios. People in the scene are tracked through the video sequence and their head pose and 3D location are estimated. Based on the concept of f-formation, we define with the orientation and distance an inherently social pairwise feature that describes the affinity of a pair of people in the scene. We apply a correlation clustering algorithm that merges pairs of people into socially related groups. Due to the very shifting nature of social interactions and the different meanings that orientations and distances can assume in different contexts, we learn the weight vector of the correlation clustering using Structural SVMs. We extensively test our approach on two publicly available datasets showing encouraging results when detecting groups from first-person camera views.
机译:在本文中,我们提出了一种在自我视觉场景中检测群体的新颖方法。通过视频序列跟踪场景中的人物,并估计他们的头部姿势和3D位置。基于f形式的概念,我们使用方向和距离定义了一个固有的社会成对特征,该特征描述了场景中一对人的亲和力。我们应用了一种相关性聚类算法,将成对的人合并到与社会相关的群体中。由于社交互动的变化性质以及方向和距离在不同上下文中可能具有的不同含义,我们使用结构化支持向量机学习相关性聚类的权重向量。我们在两个公开可用的数据集上对我们的方法进行了广泛的测试,当从第一人称视角查看图像组时,这些数据集显示出令人鼓舞的结果。

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