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Sensor-Based Human Activity Recognition with Spatio-Temporal Deep Learning

机译:基于传感器的人类活动认识与时空深度学习

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摘要

Human activity recognition (HAR) remains a challenging yet crucial problem to address in computer vision. HAR is primarily intended to be used with other technologies, such as the Internet of Things, to assist in healthcare and eldercare. With the development of deep learning, automatic high-level feature extraction has become a possibility and has been used to optimize HAR performance. Furthermore, deep-learning techniques have been applied in various fields for sensor-based HAR. This study introduces a new methodology using convolution neural networks (CNN) with varying kernel dimensions along with bi-directional long short-term memory (BiLSTM) to capture features at various resolutions. The novelty of this research lies in the effective selection of the optimal video representation and in the effective extraction of spatial and temporal features from sensor data using traditional CNN and BiLSTM. Wireless sensor data mining (WISDM) and UCI datasets are used for this proposed methodology in which data are collected through diverse methods, including accelerometers, sensors, and gyroscopes. The results indicate that the proposed scheme is efficient in improving HAR. It was thus found that unlike other available methods, the proposed method improved accuracy, attaining a higher score in the WISDM dataset compared to the UCI dataset (98.53% vs. 97.05%).
机译:人类活动识别(Har)仍然是在计算机愿景中解决的具有挑战性的问题。哈尔主要用于与其他技术(例如物联网)一起使用,以协助医疗保健和老人。随着深度学习的发展,自动高级功能提取已成为一种可能性,已被用于优化HAR性能。此外,对传感器的Har的各种领域已经应用了深学习技术。本研究介绍了使用卷积神经网络(CNN)的新方法,其具有不同的内核尺寸,以及双向长短期存储器(BILSTM)以捕获各种分辨率的特征。该研究的新颖性在于使用传统CNN和BILSTM的传感器数据有效地选择最佳视频表示以及有效提取来自传感器数据的空间和时间特征。无线传感器数据挖掘(WISDM)和UCI数据集用于这种提出的方​​法,其中通过各种方法收集数据,包括加速度计,传感器和陀螺仪。结果表明,所提出的方案在改善Har中有效。因此,与其他可用方法不同,所提出的方法提高了准确性,与UCI数据集相比,在WisDM数据集中获得了更高的分数(98.53%与97.05%)。

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