利用LSTM递归神经网络从智能手表数据识别智慧城市中的人类活动

M. Kandpal, B. Sharma, Rabindra Kumar Barik, Subrata Chowdhury, S. Patra, I. Dhaou
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引用次数: 0

摘要

由于医疗保健和智慧城市的融合,信息和技术被用于世界各地的卫生和医疗程序。智慧城市的居民现在享受更好的生活和更健康的身体,因为融合。智能手表技术和深度学习技术的出现,使这些任务的性能和准确性有了潜在的提高。我们的论文探讨了递归神经网络特别是LSTM在使用智能手表传感器数据(即陀螺仪和加速度计数据)进行动作识别任务中的应用。我们考虑了一些一般的活动,如站立、行走、坐着等,并使用时间序列传感器数据实现了一个LSTM网络用于动作识别工作。该模型可用于其他基于健康的应用程序,这些应用程序可以通过记录用户的活动来监控用户的健康状况。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Human Activity Recognition in Smart Cities from Smart Watch Data using LSTM Recurrent Neural Networks
Due to the convergence of healthcare and smart cities, information and technology are employed in health and medical procedures worldwide. Residents of smart cities now enjoy better lives and healthier bodies because to integration. The advent of smart watch technology and deep learning techniques has engendered a potential increase in performance and accuracy of such tasks. Our paper explores the application of recurrent neural networks particularly LSTM for action recognition task using smart watch sensor data, i.e., gyroscope and accelerometer data. We have taken into consideration some general activities like standing, walking, sitting, etc. and implemented a LSTM network for the action recognition job using the time sequences sensor data. This model can be useful for other health-based applications which can monitor the health conditions of a user by keeping record of his activities.
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