基于智能手机传感器的人体活动识别系统中一种高效CNN-LSTM方法

Nurul Amin Choudhury, B. Soni
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引用次数: 3

摘要

人体活动识别(Human Activity Recognition, HAR)是当前传感器技术和智能学习算法领域的研究热点之一。深度学习算法在HAR系统中得到了极大的利用,因为它消除了手动特征工程的需要。研究人员使用普通和混合深度学习方案来训练和比较模型。本文提出了一种有效的CNN-LSTM模型,用于使用智能手机传感器数据识别日常人类活动。采用时间分布特征提取层来建立当代CNN-LSTM模型,既可以有效地处理分层特征,又可以使用LSTM记忆方案轻松地选择相关特征。本文将CNN-LSTM模型与DNN和LSTM模型在准确率、精密度、召回率、F1分数、训练损失和计算时间等方面进行了比较。所提出的模型在所有评价指标上都优于其他模型。使用holdout训练和test split,在relu激活函数和100次训练迭代下,模型的平均准确率分别达到97.609%和98.69%。在不同模型的验证中,混合模型的计算时间更少,计算效率比其他模型高(76.23±140.76)%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Efficient CNN-LSTM Approach for Smartphone Sensor-Based Human Activity Recognition System
Human Activity Recognition - HAR is one of the most popular area in the filed of sensor technology and smart learning algorithms. Deep learning algorithms are immensely exploited in HAR systems as it eliminates the need of manual feature engineering. Researchers use normal and hybrid deep learning schemes for training and comparing the models. This paper proposes an efficient CNN-LSTM model for recognising daily human activities using smartphone sensor data. A contemporary CNN-LSTM model is created using time distributed feature extraction layers as it can efficiently handle hierarchical features and can selects the relevant features easily using LSTM memorization scheme. The proposed CNN-LSTM model is compared with two other models - DNN and LSTM in terms of accuracy, precision, recall, F1- score, training loss and computational times. The proposed model managed to outperform other models optimally in all the evaluation metrics. Using holdout training and testing split, the model managed to achieve an average accuracy of 97.609% and 98.69% with relu activation function and 100 training iteration. On validating the different models, the hybrid models takes less computational time and managed to achieve an computational efficiency of (76.23 ± 140.76)% from other models.
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