Abstract:
Wi-Fi Received Signal Strength (RSS) based indoor localization is promising and widely investigated due to the pervasive deployment of Wi-Fi Access Points (APs). However,...Show MoreMetadata
Abstract:
Wi-Fi Received Signal Strength (RSS) based indoor localization is promising and widely investigated due to the pervasive deployment of Wi-Fi Access Points (APs). However, one major challenge to build a practical Indoor Positioning System is that end users usually carry different devices with different received signal characteristics, and thus the performance can be degraded due to this device heterogeneity. Existing solutions are either not practical or have limited accuracy. We propose two novel solutions to mitigate device heterogeneity for representative localization approaches using Gaussian Process regression and neural network, respectively. The first solution is built upon Gaussian Process regression by jointly calibrating and localizing a target device. The second solution utilizes adversarial training with neural network. Real world experiments show that both solutions are effective and achieve higher accuracy than that of two baseline approaches in most cases.
Published in: IEEE INFOCOM 2020 - IEEE Conference on Computer Communications Workshops (INFOCOM WKSHPS)
Date of Conference: 06-09 July 2020
Date Added to IEEE Xplore: 10 August 2020
ISBN Information:
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- IEEE Keywords
- Index Terms
- Indoor Localization ,
- Heterogeneous Devices ,
- Neural Network ,
- End-users ,
- Signal Strength ,
- Gaussian Process ,
- Kriging ,
- Local Approach ,
- Real-world Experiments ,
- Adversarial Training ,
- Maximum Likelihood Estimation ,
- Deep Neural Network ,
- Basic Idea ,
- Localization Accuracy ,
- Kernel Function ,
- Target Area ,
- Global Positioning System ,
- Localization Performance ,
- Robust Features ,
- Local Algorithm ,
- Test Device ,
- Local Label ,
- Survey Sites ,
- Single Vector ,
- Training Pairs ,
- Calibration Device ,
- Inference Stage ,
- Unknown Location ,
- Terminal Position ,
- Android Application
- Author Keywords
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Indoor Localization ,
- Heterogeneous Devices ,
- Neural Network ,
- End-users ,
- Signal Strength ,
- Gaussian Process ,
- Kriging ,
- Local Approach ,
- Real-world Experiments ,
- Adversarial Training ,
- Maximum Likelihood Estimation ,
- Deep Neural Network ,
- Basic Idea ,
- Localization Accuracy ,
- Kernel Function ,
- Target Area ,
- Global Positioning System ,
- Localization Performance ,
- Robust Features ,
- Local Algorithm ,
- Test Device ,
- Local Label ,
- Survey Sites ,
- Single Vector ,
- Training Pairs ,
- Calibration Device ,
- Inference Stage ,
- Unknown Location ,
- Terminal Position ,
- Android Application
- Author Keywords