Recognition of different daily living activities using hidden Markov model regression

Khaled Safi, S. Mohammed, F. Attal, M. Khalil, Y. Amirat
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引用次数: 16

Abstract

The human activity recognition is widely used for human behavior prediction especially for dependent people. This is achieved to provide safety, health monitoring, and well being of this population at home. In this paper, the problem of human activity recognition is reformulated as joint segmentation of multidimensional time series. The hidden Markov model regression (HMMR) is used to perform unsupervised segmentation strategy between activities using the expectation-maximization algorithm. This is accomplished over six logical scenarios of twelve daily activities such as stair descent, standing, sitting down, sitting, From sitting to sitting on the ground and sitting on the ground. To evaluate the performance of HMMR model, other unsupervised methods are used including K-means, Gaussian mixtures model and the hidden Markov model. The results show that the HMMR model provides the best results for the different scenarios with up to 97% in terms of correct classification rate.
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使用隐马尔可夫模型回归识别不同的日常生活活动
人类活动识别被广泛应用于人类行为预测,特别是对依赖者的行为预测。实现这一目标是为了在家中为这些人口提供安全、健康监测和福祉。本文将人体活动识别问题重新表述为多维时间序列的联合分割问题。利用隐马尔可夫模型回归(HMMR),利用期望最大化算法实现活动之间的无监督分割策略。这是通过十二种日常活动的六个逻辑场景来完成的,比如楼梯下降,站立,坐下,坐着,从坐到坐在地上,再坐在地上。为了评估HMMR模型的性能,还使用了其他无监督方法,包括K-means、高斯混合模型和隐马尔可夫模型。结果表明,HMMR模型在不同场景下的分类正确率最高可达97%。
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