从RGB-D数据中自动检测人类互动,用于社会活动分类

Claudio Coppola, S. Coşar, D. Faria, N. Bellotto
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引用次数: 15

摘要

我们提出了一个社会互动的时间检测系统。到目前为止,许多工作已经成功地从数据集中的剪辑视频中识别出活动,但对于机器人应用来说,能够转向更真实的数据是很重要的。由于这个原因,建议的方法暂时检测个人或社会活动发生的间隔。对人类活动的识别是分析人类行为的一个关键特征。特别是,对社会活动的识别对于触发人机交互或检测潜在危险的情况非常有用。基于此,本研究有三个目标:(1)定义一组新的描述符,这些描述符能够表征人类的互动;(2)建立基于社会互动或个体行为的时间间隔分割计算模型;(3)提供包含个人活动和社会互动连续流的RGB-D数据的公共数据集。结果表明,该方法在社会活动的时间分割上取得了较好的效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic detection of human interactions from RGB-D data for social activity classification
We present a system for temporal detection of social interactions. Many of the works until now have succeeded in recognising activities from clipped videos in datasets, but for robotic applications, it is important to be able to move to more realistic data. For this reason, the proposed approach temporally detects intervals where individual or social activity is occurring. Recognition of human activities is a key feature for analysing the human behaviour. In particular, recognition of social activities is useful to trigger human-robot interactions or to detect situations of potential danger. Based on that, this research has three goals: (1) define a new set of descriptors, which are able to characterise human interactions; (2) develop a computational model to segment temporal intervals with social interaction or individual behaviour; (3) provide a public dataset with RGB-D data with continuous stream of individual activities and social interactions. Results show that the proposed approach attained relevant performance with temporal segmentation of social activities.
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