Published June 15, 2021 | Version v1
Conference paper Open

Smartphone Distance Estimation Based on RSSI-Fuzzy Classification Approach

  • 1. Institute of New Imaging Technologies, Universitat Jaume I, Castello ́n, Spain
  • 2. UBIK Geospatial Solutions S.L., Castello ́n, Spain

Description

Positioning people indoors has known an exponential growth in the last few years, especially thanks to Bluetooth Low Energy (BLE) technology and the Received Signal Strength Indicator (RSSI) technique. This approach is available in wearable devices, is easy to implement and has energy consumption advantages. However, the relative distance calculation is inaccurate, as the strength of BLE signals significantly fluctuates in indoor environments. Typical coping mechanisms, such as path-loss propagation models, require mathematical modeling and time-consuming calibration, that depend on the environment. In this paper, we propose a novel distance estimator based on RSSI-fuzzy classification of the BLE signals. Fuzzy-logic improves the robustness and accuracy of RSSI-based estimators, does not require an explicit propagation model and is easy and intuitive to (graphically) tune (using basic statistical analysis). The estimator’s suitability and the feasibility to provide an easy implementation were experimentally demonstrated in two scenarios with real-world data. 

Files

Pre-print_Smartphone_Distance_Estimation_Based_on_RSSI_Fuzzy_Classification_Approach.pdf

Additional details

Funding

A-WEAR – A network for dynamic WEarable Applications with pRivacy constraints 813278
European Commission