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A hierarchical abnormal human activity recognition system based on R-transform and kernel discriminant analysis for elderly health care

机译:基于R变换和核仁判别分析的层次式异常人类活动识别系统

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摘要

A hierarchical human activity recognition (HAR) system is proposed to recognize abnormal activities from the daily life activities of elderly people living alone. The system is structured to have two-levels of feature extraction and activity recognition. The first level consists of R-transform, kernel discriminant analysis (KDA), k-means algorithm and HMM to recognize the video activity. The second level consists of KDA, k-means algorithm and HMM, and is selectively applied to the recognized activities from the first level when it belongs to the specified group. The proposed hierarchical approach is useful in increasing the recognition rate for the highly similar activities. System performance is analyzed by selecting the optimized number of features, number of HMM states and the number of frames per second to achieve maximum recognition rate. The system is validated by a novel set of six abnormal activities; falling backward, falling forward, chest pain, headache, vomiting, and fainting and a normal activity walking. Experimental results show an average recognition rate of 97.1 % for all the activities by using the proposed hierarchical HAR system.
机译:提出了一种分级人类活动识别(HAR)系统,以从独居老人的日常生活活动中识别异常活动。该系统具有两个级别的特征提取和活动识别。第一级包括R变换,内核判别分析(KDA),k均值算法和HMM以识别视频活动。第二级由KDA,k-means算法和HMM组成,当它属于指定组时,有选择地从第一级应用于识别的活动。所提出的分层方法对于提高高度相似的活动的识别率很有用。通过选择最佳数量的功能,HMM状态数量和每秒达到最大识别率的帧数来分析系统性能。该系统通过一组新颖的六种异常活动进行了验证。向后下落,向前下落,胸痛,头痛,呕吐,昏厥和正常活动行走。实验结果表明,使用所提出的分层HAR系统,所有活动的平均识别率为97.1%。

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