Deep Learning Techniques for Radar-Based Continuous Human Activity Recognition

IF 4 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Machine learning and knowledge extraction Pub Date : 2023-10-14 DOI:10.3390/make5040075
Ruchita Mehta, Sara Sharifzadeh, Vasile Palade, Bo Tan, Alireza Daneshkhah, Yordanka Karayaneva
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Abstract

Human capability to perform routine tasks declines with age and age-related problems. Remote human activity recognition (HAR) is beneficial for regular monitoring of the elderly population. This paper addresses the problem of the continuous detection of daily human activities using a mm-wave Doppler radar. In this study, two strategies have been employed: the first method uses un-equalized series of activities, whereas the second method utilizes a gradient-based strategy for equalization of the series of activities. The dynamic time warping (DTW) algorithm and Long Short-term Memory (LSTM) techniques have been implemented for the classification of un-equalized and equalized series of activities, respectively. The input for DTW was provided using three strategies. The first approach uses the pixel-level data of frames (UnSup-PLevel). In the other two strategies, a convolutional variational autoencoder (CVAE) is used to extract Un-Supervised Encoded features (UnSup-EnLevel) and Supervised Encoded features (Sup-EnLevel) from the series of Doppler frames. The second approach for equalized data series involves the application of four distinct feature extraction methods: i.e., convolutional neural networks (CNN), supervised and unsupervised CVAE, and principal component Analysis (PCA). The extracted features were considered as an input to the LSTM. This paper presents a comparative analysis of a novel supervised feature extraction pipeline, employing Sup-ENLevel-DTW and Sup-EnLevel-LSTM, against several state-of-the-art unsupervised methods, including UnSUp-EnLevel-DTW, UnSup-EnLevel-LSTM, CNN-LSTM, and PCA-LSTM. The results demonstrate the superiority of the Sup-EnLevel-LSTM strategy. However, the UnSup-PLevel strategy worked surprisingly well without using annotations and frame equalization.
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基于雷达的连续人类活动识别的深度学习技术
人类执行日常任务的能力随着年龄和与年龄有关的问题而下降。远程人体活动识别(HAR)有利于老年人的定期监测。本文研究了利用毫米波多普勒雷达对人类日常活动进行连续探测的问题。在本研究中,采用了两种策略:第一种方法使用一系列不均衡的活动,而第二种方法使用基于梯度的策略来均衡一系列活动。动态时间规整(DTW)算法和长短期记忆(LSTM)技术分别用于非均衡和均衡系列活动的分类。DTW的投入是通过三种战略提供的。第一种方法使用帧的像素级数据(unsup -level)。在另外两种策略中,使用卷积变分自编码器(CVAE)从多普勒帧序列中提取无监督编码特征(UnSup-EnLevel)和有监督编码特征(Sup-EnLevel)。均衡化数据序列的第二种方法涉及到四种不同特征提取方法的应用:即卷积神经网络(CNN)、有监督和无监督CVAE以及主成分分析(PCA)。将提取的特征作为LSTM的输入。本文提出了一种新的监督特征提取管道,采用supp - enlevel - dtw和supp - enlevel - lstm,与几种最先进的无监督方法,包括unsupp - enlevel - dtw, unsupp - enlevel - lstm, CNN-LSTM和PCA-LSTM进行比较分析。结果证明了Sup-EnLevel-LSTM策略的优越性。然而,unsup - level策略在不使用注释和帧均衡的情况下出奇地好。
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来源期刊
CiteScore
6.30
自引率
0.00%
发文量
0
审稿时长
7 weeks
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