无需数据预处理

IF 3.5 Q2 COMPUTER SCIENCE, INFORMATION SYSTEMS
Bo Wei, K. Li, Chengwen Luo, Weitao Xu, Jin Zhang
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引用次数: 4

摘要

与设备无关的上下文感知对许多应用程序都很重要。无设备上下文感知有两种广泛使用的方法,即基于视频和基于无线电的方法。基于视频的方法可以提供良好的性能,但隐私是一个严重的问题。基于无线电的上下文感知应用引起了研究人员的注意,因为它不侵犯隐私,而且无线电信号可以穿透障碍物。现有的工作为每个基于无线电的应用设计了明确的方法。此外,他们在进行分类之前使用了一个额外的步骤来提取特征,并利用深度学习作为分类工具。虽然这个特征提取步骤有助于探索原始信号的模式,但它会产生不必要的噪声和信息损失。然而,使用未经初始数据处理的原始CSI信号被认为没有可用的模式。在这篇文章中,我们是第一个提出一个创新的基于深度学习的通用框架,用于信号处理和分类。本文的关键新颖之处在于,该框架可以推广到使用原始CSI的所有基于无线电的上下文感知应用程序。我们还消除了从原始无线电信号中提取特征的额外工作。我们进行了广泛的评估,以显示我们提出的方法及其推广的优越性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
No Need of Data Pre-processing
Device-free context awareness is important to many applications. There are two broadly used approaches for device-free context awareness, i.e., video-based and radio-based. Video-based approaches can deliver good performance, but privacy is a serious concern. Radio-based context awareness applications have drawn researchers' attention instead, because it does not violate privacy and radio signal can penetrate obstacles. The existing works design explicit methods for each radio-based application. Furthermore, they use one additional step to extract features before conducting classification and exploit deep learning as a classification tool. Although this feature extraction step helps explore patterns of raw signals, it generates unnecessary noise and information loss. The use of raw CSI signal without initial data processing was, however, considered as no usable patterns. In this article, we are the first to propose an innovative deep learning–based general framework for both signal processing and classification. The key novelty of this article is that the framework can be generalised for all the radio-based context awareness applications with the use of raw CSI. We also eliminate the extra work to extract features from raw radio signals. We conduct extensive evaluations to show the superior performance of our proposed method and its generalisation.
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来源期刊
CiteScore
5.20
自引率
3.70%
发文量
0
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