CellSense: An Accurate Energy-Efficient GSM Positioning System
Mohamed Ibrahim, Moustafa Youssef

TL;DR
CellSense is a probabilistic and hybrid GSM localization system that significantly improves accuracy and reduces computational costs on Android phones in urban and rural environments.
Contribution
The paper introduces CellSense, a novel probabilistic fingerprinting system with a hybrid approach that enhances GSM localization accuracy and efficiency.
Findings
At least 108.57% accuracy improvement in rural areas
At least 89.03% accuracy improvement in urban areas
Over 6 times reduction in computational requirements
Abstract
Context-aware applications have been gaining huge interest in the last few years. With cell phones becoming ubiquitous computing devices, cell phone localization has become an important research problem. In this paper, we present CellSense, a prob- abilistic RSSI-based fingerprinting location determi- nation system for GSM phones. We discuss the chal- lenges of implementing a probabilistic fingerprinting localization technique in GSM networks and present the details of the CellSense systemand how it addresses these challenges. We then extend the proposed system using a hybrid technique that combines probabilistic and deterministic estimation to achieve both high ac- curacy and low computational overhead.Moreover, the accuracy of the hybrid technique is robust to changes in its parameter values. To evaluate our proposed system, we implemented CellSense on Android-based phones. Results…
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Taxonomy
TopicsIndoor and Outdoor Localization Technologies · Speech and Audio Processing · RFID technology advancements
