基于上下文无关语法表示的复合人类活动识别

M. Ryoo, J. Aggarwal
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引用次数: 288

摘要

本文描述了复杂人类活动自动识别的一般方法。该方法使用基于上下文无关语法(CFG)的表示方案来表示复合动作和交互。基于cfg的表示使我们能够基于简单的动作或运动正式定义复杂的人类活动。人类活动分为三大类:原子作用、复合作用和相互作用。我们的系统不仅能够形式化地表示复杂的人类活动,而且能够高精度地识别所表示的动作和交互。处理图像序列以提取姿势和手势。基于手势,系统检测一系列图像帧中发生的动作和交互。结果表明,该系统能够自然地表示复合动作和交互。经过测试,该系统可以表示和识别八种类型的交互:接近、离开、指向、握手、拥抱、打拳、踢脚和推。实验结果表明,该系统能够以较高的识别率识别复合动作和交互序列。
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Recognition of Composite Human Activities through Context-Free Grammar Based Representation
This paper describes a general methodology for automated recognition of complex human activities. The methodology uses a context-free grammar (CFG) based representation scheme to represent composite actions and interactions. The CFG-based representation enables us to formally define complex human activities based on simple actions or movements. Human activities are classified into three categories: atomic action, composite action, and interaction. Our system is not only able to represent complex human activities formally, but also able to recognize represented actions and interactions with high accuracy. Image sequences are processed to extract poses and gestures. Based on gestures, the system detects actions and interactions occurring in a sequence of image frames. Our results show that the system is able to represent composite actions and interactions naturally. The system was tested to represent and recognize eight types of interactions: approach, depart, point, shake-hands, hug, punch, kick, and push. The experiments show that the system can recognize sequences of represented composite actions and interactions with a high recognition rate.
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