Understanding and Improving Deep Neural Network for Activity Recognition

Li Xue, Si Xiandong, Nie Lan-shun, Liu Jiazhen, Ding Renjie, Zhang Dechen, Chu Dian-hui
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引用次数: 17

Abstract

Activity recognition has become a popular research branch in the field of pervasive computing in recent years. A large number of experiments can be obtained that activity sensor-based data's characteristic in activity recognition is variety, volume, and velocity. Deep learning technology, together with its various models, is one of the most effective ways of working on activity data. Nevertheless, there is no clear understanding of why it performs so well or how to make it more effective. In order to solve this problem, first, we applied convolution neural network on Human Activity Recognition Using Smart phones Data Set. Second, we realized the visualization of the sensor-based activity's data features extracted from the neural network. Then we had in-depth analysis of the visualization of features, explored the relationship between activity and features, and analyzed how Neural Networks identify activity based on these features. After that, we extracted the significant features related to the activities and sent the features to the DNN-based fusion model, which improved the classification rate to 96.1%. This is the first work to our knowledge that visualizes abstract sensor-based activity data features. Based on the results, the method proposed in the paper promises to realize the accurate classification of sensor- based activity recognition.
深度神经网络在活动识别中的理解与改进
近年来,活动识别已成为普适计算领域的一个热门研究分支。大量实验表明,基于活动传感器的数据在活动识别中的特点是种类多、量大、速度快。深度学习技术及其各种模型是处理活动数据最有效的方法之一。然而,对于它为何表现如此之好,以及如何使其更有效,目前还没有明确的认识。为了解决这一问题,首先,我们将卷积神经网络应用于智能手机数据集的人体活动识别。其次,我们实现了从神经网络中提取的基于传感器的活动数据特征的可视化。然后对特征的可视化进行了深入分析,探讨了活动与特征之间的关系,并分析了神经网络如何基于这些特征识别活动。之后,我们提取与活动相关的显著特征,并将这些特征发送到基于dnn的融合模型中,将分类率提高到96.1%。据我们所知,这是第一个将抽象的基于传感器的活动数据特征可视化的工作。结果表明,本文提出的方法有望实现基于传感器的活动识别的准确分类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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