基于R-GBD传感器的VQ-HMM人体活动识别分类器

A. Tsai, Yang-Yen Ou, Chieh-Ann Sun, Jhing-Fa Wang
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引用次数: 4

摘要

本研究提出了一个框架,通过使用Kinect传感器捕获的3d骨骼关节来理解人类在家中的活动。该系统是为家用机器人视觉系统而开发的,以增强机器人应用的人性化和丰富性。该系统将人体活动视为具有代表性的三维姿态数据的时间序列。由于骨骼关节被矢量量化编码成姿势词汇表,一个活动可以被描述为一系列的姿势。训练离散hmm将连续姿势分类为活动类型。通过在线测试进行了实验,平均准确率为95.64%。实验结果证明了该系统在实时应用中的有效性和高效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
VQ-HMM classifier for human activity recognition based on R-GBD sensor
This study presents a framework for understanding the human activities in home by using 3-D skeleton joints captured by a Kinect sensor. The system is developed for the visual system of home robot to enhance the humane as well as the abundant for robot application. The proposed system treats the human activities as a time series of representative 3D poses data. Since the skeleton joints are encoded into pose vocabularies by Vector Quantization, an activity can be described as a series of poses. Discrete HMMs are trained to classify sequential poses into activity type. Experiments are performed on online test with the average accuracy 95.64% obtained. The experimental results have demonstrated the effectiveness and efficiency of the proposed system in real time application.
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