학술논문

A Comprehensive and Reproducible Comparison of Clustering and Optimization Rules in Wi-Fi Fingerprinting
Document Type
Periodical
Source
IEEE Transactions on Mobile Computing IEEE Trans. on Mobile Comput. Mobile Computing, IEEE Transactions on. 21(3):769-782 Mar, 2022
Subject
Computing and Processing
Communication, Networking and Broadcast Technologies
Signal Processing and Analysis
Wireless fidelity
Optimization
Mobile computing
Computational complexity
Computational efficiency
Estimation
Artificial neural networks
Indoor positioning
Wi-Fi fingerprinting
clustering
computational costs
time complexity
benchmarking
reproducibility
Language
ISSN
1536-1233
1558-0660
2161-9875
Abstract
Wi-Fi fingerprinting is a well-known technique used for indoor positioning. It relies on a pattern recognition method that compares the captured operational fingerprint with a set of previously collected reference samples (radio map) using a similarity function. The matching algorithms suffer from a scalability problem in large deployments with a huge density of fingerprints, where the number of reference samples in the radio map is prohibitively large. This paper presents a comprehensive comparative study of existing methods to reduce the complexity and size of the radio map used at the operational stage. Our empirical results show that most of the methods reduce the computational burden at the expense of a degraded accuracy. Among the studied methods, only $k$k-means, affinity propagation, and the rules based on the strongest access point properly balance the positioning accuracy and computational time. In addition to the comparative results, this paper also introduces a new evaluation framework with multiple datasets, aiming at getting more general results and contributing to a better reproducibility of new proposed solutions in the future.