Channel State Information Based Localization with Deep Learning
Kutay B\"olat

TL;DR
This paper explores indoor localization using Channel State Information (CSI) data processed through deep learning models, leveraging accessible CSI from commercial wireless chipsets to improve positioning accuracy.
Contribution
It introduces a test environment for CSI data collection and applies deep learning techniques for indoor localization, addressing the challenge of limited CSI accessibility.
Findings
CSI data can be effectively used for localization
Deep learning models improve positioning accuracy
A practical test environment was established
Abstract
Localization is one of the most important problems in various fields such as robotics and wireless communications. For instance, Unmanned Aerial Vehicles (UAVs) require the information of the position precisely for an adequate control strategy. This problem is handled very efficiently with integrated GPS units for outdoor applications. However, indoor applications require special treatment due to the unavailability of GPS signals. Another aspect of mobile robots such as UAVs is that there is constant wireless communication between the mobile robot and a computational unit. This communication is mainly done for obtaining telemetry information or computation of control actions directly. The responsible integrated units for this transmission are commercial wireless communication chipsets. These units on the receiver side are responsible for getting rid of the diverse effects of the…
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Taxonomy
TopicsIndoor and Outdoor Localization Technologies · Underwater Vehicles and Communication Systems · Robotics and Sensor-Based Localization
MethodsTest · Greedy Policy Search
