학술논문

Autoencoder Extreme Learning Machine for Fingerprint-Based Positioning: A Good Weight Initialization is Decisive
Document Type
Periodical
Source
IEEE Journal of Indoor and Seamless Positioning and Navigation J. Ind. Sea. Pos. Nav. Indoor and Seamless Positioning and Navigation, IEEE Journal of. 1:53-68 2023
Subject
Aerospace
Transportation
Robotics and Control Systems
Communication, Networking and Broadcast Technologies
General Topics for Engineers
Components, Circuits, Devices and Systems
Signal Processing and Analysis
Fingerprint recognition
Location awareness
Navigation
Decoding
Data models
Data compression
Training
Encoding
Machine learning
Extreme learning machines
Indoor positioning systems
Singular value decomposition
Wireless fidelity
Autoencoder (AE)
extreme learning machine (ELM)
indoor positioning
singular value decomposition (SVD)
weight initialization
Wi-Fi fingerprinting
Language
ISSN
2832-7322
Abstract
Indoor positioning based on machine-learning (ML) models has attracted widespread interest in the last few years, given its high performance and usability. Supervised, semisupervised, and unsupervised models have thus been widely used in this field, not only to estimate the user position, but also to compress, clean, and denoise fingerprinting datasets. Some scholars have focused on developing, improving, and optimizing ML models to provide accurate solutions to the end user. This article introduces a novel method to initialize the input weights in autoencoder extreme learning machine (AE-ELM), namely factorized input data (FID), which is based on the normalized form of the orthogonal component of the input data. AE-ELM with FID weight initialization is used to efficiently reduce the radio map. Once the dimensionality of the dataset is reduced, we use $k$-nearest neighbors to perform the position estimation. This research work includes a comparative analysis with several traditional ways to initialize the input weights in AE-ELM, showing that FID provide a significantly better reconstruction error. Finally, we perform an assessment with 13 indoor positioning datasets collected from different buildings and in different countries. We show that the dimensionality of the datasets can be reduced more than 11 times on average, while the positioning error suffers only a small increment of 15% (on average) in comparison to the baseline.

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