Deep Learning Models for Daily Living Activity Recognition based on Wearable Inertial Sensors

S. Mekruksavanich, Ponnipa Jantawong, Narit Hnoohom, A. Jitpattanakul
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引用次数: 4

Abstract

Due to the breadth of its application domains, Hu-man Activity Recognition (HAR) is a problematic area of human-computer interaction. HAR can be used in remote monitoring of senior healthcare and concern situations in intelligent man-ufacturing, among other applications. HAR based on wearable inertial sensors has been researched identification efficiency in various kinds of human actions considerably more than vision-based HAR. The sensor-based HAR is generally applicable to indoor and outdoor locations without privacy considerations of implementation. In this research, we explore the recognition performance of multiple deep learning (DL) models to recognize everyday living human activities. We developed a deep residual neural network that employed aggregated multi-branch transformation to boost identification performance. The proposed model is called the ResNeXt model. To evaluate its performance, three standard DL models (CNN, LSTM, and CNN-LSTM) are investigated and compared to our proposed model using a standard HAR dataset called Daily Living Activity dataset. These datasets gathered mobility signal data from multimodal sensors (accelerometer, gyroscope, and magnetometer) in three distinct body areas (wrist, hip, and ankle). The experimental findings reveal that the proposed model surpasses other benchmark DL models with maximum accuracy and F1-scores. Furthermore, the findings show that the ResNeXt model is more resistant than other models with fewer training parameters.
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基于可穿戴惯性传感器的日常生活活动识别深度学习模型
由于其应用领域的广泛性,人机活动识别(HAR)一直是人机交互领域中的一个难题。HAR可用于远程监控高级医疗保健和智能制造中的关注情况,以及其他应用。研究表明,基于可穿戴惯性传感器的HAR在各种人体动作中的识别效率大大高于基于视觉的HAR。基于传感器的HAR一般适用于室内和室外位置,而不需要考虑隐私问题。在本研究中,我们探索了多种深度学习(DL)模型识别日常生活人类活动的识别性能。我们开发了一种深度残差神经网络,采用聚合多分支变换来提高识别性能。提出的模型称为ResNeXt模型。为了评估其性能,研究了三种标准深度学习模型(CNN, LSTM和CNN-LSTM),并使用称为日常生活活动数据集的标准HAR数据集与我们提出的模型进行了比较。这些数据集收集了来自三个不同身体部位(手腕、臀部和脚踝)的多模态传感器(加速度计、陀螺仪和磁力计)的移动信号数据。实验结果表明,该模型在最高精度和f1分数方面优于其他基准深度学习模型。此外,研究结果表明,ResNeXt模型比其他训练参数较少的模型具有更强的抵抗性。
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