基于RGB-D数据的接近先验概率融合骨架特征的社会活动识别

Claudio Coppola, D. Faria, U. Nunes, N. Bellotto
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引用次数: 34

摘要

基于身体动作的社会活动是非语言和身体行为的一个重要特征,它被定义为个体之间的沟通信号和社会互动的功能。社会活动识别对于研究人类之间的交流以及人类与机器人之间的互动具有重要意义。在此基础上,本研究有三个目标:(1)利用融合个体身体时空特征和个体关系社会特征的概率方法识别社会行为(如人与人之间的互动);(2)基于个体在交互过程中的物理接近度来学习先验,使用邻近学理论来提供活动分类器的概率集合;(3)提供一个公共数据集,其中包含社会日常活动的RGB-D数据,包括有助于测试辅助生活方法的风险情况,因为这种类型的数据集仍然缺失。结果表明,与其他采用替代策略的分类方法相比,采用不同语义和接近先验的特征合并方法在分类精度、召回率和准确率方面都有提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Social activity recognition based on probabilistic merging of skeleton features with proximity priors from RGB-D data
Social activity based on body motion is a key feature for non-verbal and physical behavior defined as function for communicative signal and social interaction between individuals. Social activity recognition is important to study human-human communication and also human-robot interaction. Based on that, this research has threefold goals: (1) recognition of social behavior (e.g. human-human interaction) using a probabilistic approach that merges spatio-temporal features from individual bodies and social features from the relationship between two individuals; (2) learn priors based on physical proximity between individuals during an interaction using proxemics theory to feed a probabilistic ensemble of activity classifiers; and (3) provide a public dataset with RGB-D data of social daily activities including risk situations useful to test approaches for assisted living, since this type of dataset is still missing. Results show that using the proposed approach designed to merge features with different semantics and proximity priors improves the classification performance in terms of precision, recall and accuracy when compared with other approaches that employ alternative strategies.
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