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首页> 外文期刊>Consumer Electronics, IEEE Transactions on >Abnormal human activity recognition system based on R-transform and kernel discriminant technique for elderly home care
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Abnormal human activity recognition system based on R-transform and kernel discriminant technique for elderly home care

机译:基于R-变换和核判别技术的老年家庭护理异常人类活动识别系统

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摘要

Video sensor based human activity recognition systems have potential applications in life care and health care areas. The paper presents a system for elderly care by recognizing six abnormal activities; forward fall, backward fall, chest pain, faint, vomit, and headache, selected from the daily life activities of elderly people. Privacy of elderly people is ensured by automatically extracting the binary silhouettes from video activities. Two problems are addressed in this research, which decrease recognition accuracy during the process of abnormal human activity recognition (HAR) system development. First, the problem of continuous changing distance of a moving person from two viewpoints is resolved by using the R-transform. R-transform extracts periodic, scale and translation invariant features from the sequences of activities. Second, the high similarities in postures of different activities is significantly improved by using the kernel discriminant analysis (KDA). KDA increases discrimination between different classes of activities by using non-linear technique. Hidden markov model (HMM) is used for training and recognition of activities. The system is evaluated against linear discriminant analysis (LDA) on the original silhouette features and LDA on the R-transform features. Average recognition rate of 95.8% proves the feasibility of the system for elderly care at home 1.
机译:基于视频传感器的人类活动识别系统在生命护理和医疗保健领域具有潜在的应用。通过识别六种异常活动,本文提出了一种老年人护理系统;前倾,后倾,胸痛,晕厥,呕吐和头痛选自老年人的日常生活活动。通过自动从视频活动中提取二进制轮廓来确保老年人的隐私。这项研究解决了两个问题,它们在人类活动异常识别(HAR)系统开发过程中降低了识别准确性。首先,通过使用R变换解决了从两个观点看移动人的距离连续变化的问题。 R变换从活动序列中提取周期性,尺度和翻译不变特征。其次,通过使用核判别分析(KDA)可以显着改善不同活动的姿势的高度相似性。 KDA通过使用非线性技术来增加不同类别活动之间的区别。隐藏马尔可夫模型(HMM)用于训练和识别活动。根据原始轮廓特征的线性判别分析(LDA)和R变换特征的LDA对系统进行了评估。平均识别率为95.8%,证明了该系统在家庭中的老年人护理系统的可行性1。

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