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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Understanding social relationships in egocentric vision
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Understanding social relationships in egocentric vision

机译:以自我为中心的视野了解社会关系

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摘要

The understanding of mutual people interaction is a key component for recognizing people social behavior, but it strongly relies on a personal point of view resulting difficult to be a-priori modeled. We propose the adoption of the unique head mounted cameras first person perspective (ego-vision) to promptly detect people interaction in different social contexts. The proposal relies on a complete and reliable system that extracts people's head pose combining landmarks and shape descriptors in a temporal smoothed HMM framework. Finally, interactions are detected through supervised clustering on mutual head orientation and people distances exploiting a structural learning framework that specifically adjusts the clustering measure according to a peculiar scenario. Our solution provides the flexibility to capture the interactions disregarding the number of individuals involved and their level of acquaintance in context with a variable degree of social involvement. The proposed system shows competitive performances on both publicly available ego-vision datasets and ad hoc benchmarks built with real life situations. (C) 2015 Elsevier Ltd. All rights reserved.
机译:理解人与人之间的互动是识别人的社会行为的关键组成部分,但它强烈依赖于个人观点,因此很难先验建模。我们建议采用独特的头戴式摄像头第一人称视角(ego-vision),以迅速检测不同社交环境中的人们互动。该提案依赖于一个完整且可靠的系统,该系统在时间平滑的HMM框架中提取结合了地标和形状描述符的人的头部姿势。最终,通过在结构上学习框架,根据特定的场景专门调整聚类量度,通过在相互的头部朝向和人与人之间的距离上进行监督聚类来检测交互。我们的解决方案提供了灵活的方式来捕获交互,而无需考虑参与人员的数量及其在不同程度的社会参与情况下的相识水平。拟议的系统在公开的自我视觉数据集和根据实际情况建立的临时基准上均显示出竞争表现。 (C)2015 Elsevier Ltd.保留所有权利。

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