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Generative models for automatic recognition of human daily activities from a single triaxial accelerometer

机译:通过单个三轴加速度计自动识别人类日常活动的生成模型

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In this work, we compare two generative models including Gaussian Mixture Model (GMM) and Hidden Markov Model (HMM) with Support Vector Machine (SVM) classifier for the recognition of six human daily activity (i.e., standing, walking, running, jumping, falling, sitting-down) from a single waist-worn tri-axial accelerometer signals through 4-fold cross-validation and testing on a total of thirteen subjects, achieving an average recognition accuracy of 96.43% and 98.21% in the first experiment and 95.51% and 98.72% in the second, respectively. The results demonstrate that both HMM and GMM are not only able to learn but also capable of generalization while the former outperformed the latter in the recognition of daily activities from a single waist worn tri-axial accelerometer. In addition, these two generative models enable the assessment of human activities based on acceleration signals with varying lengths.
机译:在这项工作中,我们比较了两种生成模型,包括高斯混合模型(GMM)和隐马尔可夫模型(HMM)和支持向量机(SVM)分类器,用于识别六种人类日常活动(即站立,行走,奔跑,跳跃,腰部佩戴的三轴加速度计信号通过四重交叉验证并在总共13位受试者上进行测试,从而在第一个实验中达到96.43%和98.21%的平均识别准确度,在95.51 %和98.72%分别排在第二位。结果表明,HMM和GMM不仅能够学习,而且具有泛化能力,而前者在单腰戴式三轴加速度计的日常活动识别方面要优于后者。此外,这两个生成模型能够根据长度不同的加速度信号评估人类活动。

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