Deep learning methods for fingerprint-based indoor positioning: a review

IF 1.2 Q4 TELECOMMUNICATIONS
Fahad Al-homayani, M. Mahoor
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引用次数: 41

Abstract

ABSTRACT Outdoor positioning systems based on the Global Navigation Satellite System have several shortcomings that have deemed their use for indoor positioning impractical. Location fingerprinting, which utilizes machine learning, has emerged as a viable method and solution for indoor positioning due to its simple concept and accurate performance. In the past, shallow learning algorithms were traditionally used in location fingerprinting. Recently, the research community started utilizing deep learning methods for fingerprinting after witnessing the great success and superiority these methods have over traditional/shallow machine learning algorithms. This paper provides a comprehensive review of deep learning methods in indoor positioning. First, the advantages and disadvantages of various fingerprint types for indoor positioning are discussed. The solutions proposed in the literature are then analyzed, categorized, and compared against various performance evaluation metrics. Since data is key in fingerprinting, a detailed review of publicly available indoor positioning datasets is presented. While incorporating deep learning into fingerprinting has resulted in significant improvements, doing so, has also introduced new challenges. These challenges along with the common implementation pitfalls are discussed. Finally, the paper is concluded with some remarks as well as future research trends.
基于指纹的室内定位深度学习方法综述
摘要基于全球导航卫星系统的室外定位系统存在一些缺点,认为其用于室内定位不切实际。位置指纹识别利用机器学习,由于其概念简单、性能准确,已成为室内定位的一种可行方法和解决方案。过去,浅层学习算法传统上用于位置指纹识别。最近,研究界在见证了深度学习方法相对于传统/浅层机器学习算法的巨大成功和优势后,开始将这些方法用于指纹识别。本文对室内定位中的深度学习方法进行了全面综述。首先,讨论了用于室内定位的各种指纹类型的优点和缺点。然后对文献中提出的解决方案进行分析、分类,并与各种性能评估指标进行比较。由于数据是指纹识别的关键,因此对公开的室内定位数据集进行了详细的回顾。虽然将深度学习纳入指纹识别带来了显著的改进,但这样做也带来了新的挑战。讨论了这些挑战以及常见的实现陷阱。最后,对本文进行了总结,并对未来的研究趋势进行了展望。
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来源期刊
CiteScore
3.70
自引率
8.70%
发文量
12
期刊介绍: The aim of this interdisciplinary and international journal is to provide a forum for the exchange of original ideas, techniques, designs and experiences in the rapidly growing field of location based services on networked mobile devices. It is intended to interest those who design, implement and deliver location based services in a wide range of contexts. Published research will span the field from location based computing and next-generation interfaces through telecom location architectures to business models and the social implications of this technology. The diversity of content echoes the extended nature of the chain of players required to make location based services a reality.
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