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A Depth Camera-based Human Activity Recognition via Deep Learning Recurrent Neural Network for Health and Social Care Services

机译:通过深度学习递归神经网络对健康和社会护理服务进行基于深度相机的人类活动识别

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Human activity recognition (HAR) has become an active research topic in the fields of health and social care, since this technology offers automatic monitoring and understanding of activities of patients or residents. Depth camera-based HAR recognizes human activities using features from depth human silhouettes via conventional classifiers such as Hidden Markov Model (HMM), Conditional Random Fields etc. In this paper, we propose a new HAR system via Recurrent Neural Network (RNN) which is one of deep learning algorithms. We utilize joint angles from multiple body joints changing in time which are represented a spatiotemporal feature matrix (i.e., multiple body joint angles in time). With these derived features, we train and test our RNN for HAR. In order to evaluate our system, we have compared the performance of our RNN-based HAR against the conventional HMM- and Deep Belief Network (DBN)-based HAR using a database of Microsoft Research Cambridge-12 (MSRC-12). Our test results show that the proposed RNN-based HAR is able to recognize twelve human activities reliably and outperforms the HMM- and DBN-based HAR. We have achieved the average recognition accuracy of 99.55% for the activities. The results are 7.06% more accurate than that of the HMM-based HAR and 2.01% more accurate than that of the DBN-based HAR.
机译:人类活动识别(HAR)已成为健康和社会护理领域的活跃研究主题,因为该技术可自动监视和了解患者或居民的活动。基于深度相机的HAR通过传统分类器(例如隐马尔可夫模型(HMM),条件随机场等)使用深度人类轮廓中的特征来识别人类活动。在本文中,我们通过递归神经网络(RNN)提出了一种新的HAR系统。深度学习算法之一。我们利用多个随时间变化的身体关节的关节角度来表示时空特征矩阵(即多个身体关节的时间角度)。利用这些派生的功能,我们为RAR训练和测试了RNN。为了评估我们的系统,我们使用Microsoft Research Cambridge-12(MSRC-12)的数据库将基于RNN的HAR与基于常规HMM和深度信任网络(DBN)的HAR的性能进行了比较。我们的测试结果表明,所提出的基于RNN的HAR能够可靠地识别十二种人类活动,并且优于基于HMM和DBN的HAR。这些活动的平均识别准确率达到99.55%。结果比基于HMM的HAR高7.06%,比基于DBN的HAR高2.01%。

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