CHISEL: Compression-Aware High-Accuracy Embedded Indoor Localization with Deep Learning
This work addresses the problem of deployable indoor localization for embedded systems, offering a practical solution with improved performance.
The authors tackled indoor localization on resource-limited embedded devices by proposing CHISEL, a compression-aware deep learning framework that outperforms existing methods in accuracy while maintaining robustness.
GPS technology has revolutionized the way we localize and navigate outdoors. However, the poor reception of GPS signals in buildings makes it unsuitable for indoor localization. WiFi fingerprinting-based indoor localization is one of the most promising ways to meet this demand. Unfortunately, most work in the domain fails to resolve challenges associated with deployability on resource-limited embedded devices. In this work, we propose a compression-aware and high-accuracy deep learning framework called CHISEL that outperforms the best-known works in the area while maintaining localization robustness on embedded devices.