基于传感器数据的深度学习在高级人类活动识别中的应用

Bhavantik Gondaliya, Anil Kumar Agrawal, Ankit Chouksey
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引用次数: 0

摘要

世界上超过一半的人口拥有智能手机,许多人开始使用智能手表。许多现实世界的智能手机或基于智能手表的传感应用正在变得可用。为了更好地了解人类行为,这些应用程序通过智能手机内置的加速度计和陀螺仪传感器来识别人类活动。在这项研究中,我们研究了智能手机和智能手表上的加速度计和陀螺仪,以及它们的组合,看看哪种组合最适合底层算法。这项工作演示了如何使用长短期记忆(LSTM)方法(一种深度学习方法)自动提取活动识别的判别特征。本文报告的结果表明,使用智能手表加速计和/或任何两个或四个传感器的组合都可以产生良好的结果。然而,我们将努力提高使用原始传感器数据的活动检测的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Applications of Deep Learning for Improved Recognition from Some High-Level Human Activities Using Sensors Data
More than half of the population of the world owns a smartphone, and many individuals are beginning to utilize smartwatches. Many real-world smartphones or smartwatch-based sensing applications are becoming available. To gain a better understanding of human behaviour, these applications recognize human activities using accelerometers and gyroscope sensors built into smartphones. In this research, we looked at the accelerometer and gyroscopes on both the smartphone and the smartwatch, as well as their combinations, to see which combination performs best for the underlying algorithms. This work demonstrates how to automatically extract discriminative features for activity recognition using Long Short Term Memory (LSTM) method, a deep learning approach. The results reported in this article show that using a smartwatch accelerometer and/or a combination of any two or four sensors can produce good results. However, we will endeavour to improve the accuracy of activity detection using raw sensor data.
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