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A Domain Based Approach to Social Relation Recognition

机译:基于领域的社会关系识别方法

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Social relations are the foundation of human daily life. Developing techniques to analyze such relations from visual data bears great potential to build machines that better understand us and are capable of interacting with us at a social level. Previous investigations have remained partial due to the overwhelming diversity and complexity of the topic and consequently have only focused on a handful of social relations. In this paper, we argue that the domain-based theory from social psychology is a great starting point to systematically approach this problem. The theory provides coverage of all aspects of social relations and equally is concrete and predictive about the visual attributes and behaviors defining the relations included in each domain. We provide the first dataset built on this holistic conceptualization of social life that is composed of a hierarchical label space of social domains and social relations. We also contribute the first models to recognize such domains and relations and find superior performance for attribute based features. Beyond the encouraging performance of the attribute based approach, we also find interpretable features that are in accordance with the predictions from social psychology literature. Beyond our findings, we believe that our contributions more tightly interleave visual recognition and social psychology theory that has the potential to complement the theoretical work in the area with empirical and data-driven models of social life.
机译:社会关系是人类日常生活的基础。开发用于从视觉数据中分析这种关系的技术具有巨大的潜力,可以制造出能够更好地了解我们并能够在社会层面与我们互动的机器。由于该主题的压倒性的多样性和复杂性,以前的调查仍然是局部的,因此仅关注少数几种社会关系。在本文中,我们认为来自社会心理学的基于领域的理论是系统地解决此问题的一个很好的起点。该理论涵盖了社会关系的所有方面,并且同样是对定义每个领域中包含的关系的视觉属性和行为的具体且具有预见性的预测。我们提供了基于这种社会生活整体概念的第一个数据集,该概念由社会领域和社会关系的分层标签空间组成。我们还贡献了第一个模型来识别此类领域和关系,并为基于属性的功能找到了卓越的性能。除了基于属性的方法的令人鼓舞的性能,我们还发现了可解释的特征,这些特征与社会心理学文献的预测相符。除了我们的发现之外,我们相信我们的贡献更紧密地交织了视觉识别和社会心理学理论,它们有可能以经验和数据驱动的社会生活模型来补充该领域的理论工作。

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