Wi-Fi fingerprinting-based floor detection using adaptive scaling and weighted autoencoder extreme learning machine 
	Atefe Alitalesi, Hamid Jazayeriy, Javad Kazemitabar 
	
			
		Abstract 
		
		In practical applications, accurate floor determination in multi-building/floor environments is particularly useful and plays an increasingly crucial role in the performance of location-based services. An accurate and robust building and floor detection can reduce the location search space and ameliorate the positioning and wayfinding accuracy. As an efficient solution, this paper proposes a floor identification method that exploits statistical properties of wireless access point propagated signals to exponent received signal strength (RSS) in the radio map. Then, using single-layer extreme learning machine-weighted autoencoder (ELM-WAE) main feature extraction and dimensional reduction is implemented. Finally, ELM based classifier is trained over a new feature space to determine floor level. For the efficiency evaluation of our proposed model, we utilized three different datasets captured in the real scenarios. The evaluation result shows that the proposed model can achieve state-of-art performance and improve the accuracy of floor detection compared with multiple recent techniques. In this way, the floor level can be identified with 97.30%, 95.32%, and 96.39% on UJIIndoorLoc, Tampere, and UTSIndoorLoc datasets, respectively.
		
		 
	
			
		Keywords 
		
		Extreme learning machine autoencoder; Feature adaptive scaling; Floor detection; Wi-Fi fingerprinting
		
		 
	
				
			
	
	
							
		
		DOI: 
https://doi.org/10.11591/csit.v3i2.p104-115 																				
Refbacks 
				There are currently no refbacks. 
	 
		
Computer Science and Information Technologies  2722-323X,  e-ISSN: 2722-3221 This journal is published by the Institute of Advanced Engineering and Science (IAES)  in collaboration  with Universitas Ahmad Dahlan (UAD) .
<a title="Web Analytics" href="https://statcounter.com/" target="_blank"<img class="statcounter" src="https://c.statcounter.com/11992001/0/5fa2f457/0/" alt="Web Analytics"</div> <br> CSIT Visitor Stats 
Creative Commons Attribution-ShareAlike 4.0 International License .