Human-like action recognition system using features extracted by human

Taketoshi Mori, K. Tsujioka, M. Shimosaka, Tomomasa Sato
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引用次数: 16

Abstract

This paper proposes a human-like action recognition system which can output the result of human action recognition just like the case human does. The system targets actions associated with regular human activity such as walking or lying down, and uses three human recognition characteristics: using specific features of an action to recognize that action; recognition of simultaneous actions; and summarization of recognition results over a short time interval. Experimental results demonstrate the effectiveness of human-like recognition for identifying actions and the superior performance of the proposed system with respect to conventional action recognitions systems. Human-like recognition is expected to ensure smooth communication between humans and robots and enhances the support functionality.
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基于人类特征提取的类人动作识别系统
本文提出了一种仿人动作识别系统,它可以像人一样输出人的动作识别结果。该系统的目标是与日常人类活动(如行走或躺下)相关的动作,并使用三种人类识别特征:使用动作的特定特征来识别该动作;对同时行动的识别;并在短时间间隔内对识别结果进行汇总。实验结果证明了类人识别在识别动作方面的有效性,并且与传统的动作识别系统相比,所提出的系统具有优越的性能。类人识别有望确保人与机器人之间的顺畅沟通,并增强支持功能。
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