Deep Belief Network based Machine Learning for Daily Activities Classification

Tejtasin Phiasai, N. Chinpanthana
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Abstract

Human activity recognition has been a very active topic in pervasive computing for several years for its important applications in assisted living, healthcare, and security surveillance. Many researchers are finding and representing the details of human body gestures to determine human activity. While simple activities can be easily recognized only by acceleration data, our research has focused on the recognition and understanding the various activities in daily living. In this work, we address this problem by proposing approach theory of deep learning with the Deep belief network. Deep belief network comprises a series of Restricted Boltzmann Machines will be formed by superimposed multiple Restricted Boltzmann Machines and training the model parameters for data reconstruction, feature construction and classification. We tested our approach on PASCAL VOC datasets. The experimental results indicate that our proposed approach offers significant performance improvements with the maximum of 79.8%.
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基于深度信念网络的机器学习日常活动分类
由于在辅助生活、医疗保健和安全监控方面的重要应用,人类活动识别近年来一直是普适计算领域的一个非常活跃的话题。许多研究人员正在寻找并再现人体手势的细节,以确定人类的活动。简单的活动只有通过加速度数据才能很容易地识别出来,而我们的研究重点是对日常生活中各种活动的识别和理解。在这项工作中,我们通过提出基于深度信念网络的深度学习方法理论来解决这个问题。深度信念网络由一系列受限玻尔兹曼机组成,由多个受限玻尔兹曼机叠加而成,训练模型参数进行数据重构、特征构建和分类。我们在PASCAL VOC数据集上测试了我们的方法。实验结果表明,我们提出的方法有显著的性能提高,最高可达79.8%。
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