Optimal Time-Window Derivation for Human-Activity Recognition Based on Convolutional Neural Networks of Repeated Rehabilitation Motions

Kyoung-Soub Lee, Sanghoon Chae, Hyung‐Soon Park
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引用次数: 15

Abstract

This paper analyses the time-window size required to achieve the highest accuracy of the convolutional neural network (CNN) in classifying periodic upper limb rehabilitation. To classify real-time motions by using CNN-based human activity recognition (HAR), data must be segmented using a time window. In particular, for the repetitive rehabilitation tasks, the relationship between the period of the repetitive tasks and optimal size of the time window must be analyzed. In this study, we constructed a data-collection system composed of a smartwatch and smartphone. Five upper limb rehabilitation motions were measured for various periods to classify the rehabilitation motions for a particular time-window size. 5-fold cross-validation technique was used to compare the performance. The results showed that the size of the time-window that maximizes the performance of CNN-based HAR is affected by the size and period of the sample used.
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基于重复康复运动卷积神经网络的人体活动识别最佳时间窗推导
本文分析了卷积神经网络(CNN)在周期性上肢康复分类中达到最高准确率所需的时间窗大小。为了利用基于cnn的人体活动识别(HAR)对实时运动进行分类,必须使用时间窗对数据进行分割。特别是对于重复性康复任务,必须分析重复性任务的周期与最优时间窗大小之间的关系。在本研究中,我们构建了一个由智能手表和智能手机组成的数据采集系统。在不同时期测量5种上肢康复运动,对特定时间窗大小的康复运动进行分类。采用5倍交叉验证技术对其性能进行比较。结果表明,使基于cnn的HAR性能最大化的时间窗大小受所用样本的大小和周期的影响。
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