深度学习技术在人类活动识别中的多种应用

Gautham Sathish Nambissan, Prateek Mahajan, Shivam Sharma, Neha Gupta
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引用次数: 0

摘要

人类是活泼而固执的,因为他们总是需要运动和精神抖擞,这给了我们一个金矿般的数据来研究。我们执行的这种不断变化的活动流可以被细致地剖析,以深入了解该活动的规格。这可能会刺激物联网、自动化设备和实时监控的使用。可以使用各种技术,其中一些是可以从闭路电视和传感器获得的视频摄像机馈送,以有效地获取数据。本文将深入研究各种研究人员提出的各种技术,并比较它们在各种深度学习和机器学习模型上的性能,从本质上分析它们。我们还将展示我们自己的模型,包括使用称为UCI-HAR数据集的3D时空数据集,采用各种深度学习模型,如LSTM, svm等。深度学习模型将通过架构和超参数改进得到改进。其他部分将讨论相关工作,包括在人类活动识别中使用的数据集。讨论部分还包含了论文的技术细节,如所使用的深度学习模型的准确性和相关性。提出了一种使用视频馈送和传感器数据进行识别的混合模型。包括卫生和国防部门在内的一系列行业都将从对人类活动的迅速认识中获益。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Variegated Applications of Deep Learning Techniques in Human Activity Recognition
Humans are vivacious and obstinate in that they are plagued by a constant need to be motile and sprightly which gives us a goldmine of data to work on. This constant stream of ever-changing activities performed by us could be dissected fastidiously to gain insight into the specifications of that activity. This could spur the use of IoT, automated devices and real-time monitoring. A variety of techniques some of which are video camera feeds which could be sourced from CCTVS and sensors, could be put to use to efficaciously procure data. This paper will delve into the various techniques proposed by various researchers and compare their performance on various deep learning and machine learning models to analyse them intrinsically. We will also showcase our own model consisting of the use of a 3D tempo-spatial dataset called the UCI-HAR dataset employing various deep learning models like LSTM, SVMs and more. The deep learning model will be improved upon by architectural and hyper parameter improvements. Other sections will discuss the related works including the datasets used in Human Activity Recognition. Also contained in the discussion section are the technicalities of the papers like the accuracy and the relevancy of the deep learning models being used. A proposed hybrid models using both video feed and sensor data for recognition will be floated. A panoply of industries including the health and defence sectors stand to gain from the rapid recognition of human activities.
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