Demonstrating OmniCells: a resilient indoor localization system to devices' diversity

H Rizk, T Amano, H Yamaguchi… - Proceedings of the 28th …, 2022 - dl.acm.org
Proceedings of the 28th Annual International Conference on Mobile Computing …, 2022dl.acm.org
In this paper, we demonstrate OmniCells: a cellular-based indoor localization system
designed to combat the device heterogeneity problem. OmniCells is a deep learning-based
system that leverages cellular measurements from one or more training devices to provide
consistent performance across unseen tracking phones. In this demo, we show the effect of
device heterogeneity on the received cellular signals and how this leads to performance
deterioration of traditional localization systems. In particular, we show how OmniCells and its …
In this paper, we demonstrate OmniCells: a cellular-based indoor localization system designed to combat the device heterogeneity problem. OmniCells is a deep learning-based system that leverages cellular measurements from one or more training devices to provide consistent performance across unseen tracking phones. In this demo, we show the effect of device heterogeneity on the received cellular signals and how this leads to performance deterioration of traditional localization systems. In particular, we show how OmniCells and its novel feature extraction methods enable learning a rich and device-invariant representation without making any assumptions about the source or target devices. The system also includes other modules to increase the deep model's generalization and resilience to unseen scenarios.
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