SPLGNINov 28, 2022

On the Effective Usage of Priors in RSS-based Localization

arXiv:2212.00728v11 citationsh-index: 87
Originality Incremental advance
AI Analysis

This work addresses localization accuracy for users in urban areas with obstacles, but it is incremental as it builds on prior methods by analyzing and enhancing them with prior information.

The paper tackles localization in dense urban environments where GPS fails, by showing that their previously proposed RSS-based deep learning method (LocUNet) learns prior distributions from data, and that classical probabilistic methods can be improved by incorporating such priors, with LocUNet achieving close to optimal performance in many settings.

In this paper, we study the localization problem in dense urban settings. In such environments, Global Navigation Satellite Systems fail to provide good accuracy due to low likelihood of line-of-sight (LOS) links between the receiver (Rx) to be located and the satellites, due to the presence of obstacles like the buildings. Thus, one has to resort to other technologies, which can reliably operate under non-line-of-sight (NLOS) conditions. Recently, we proposed a Received Signal Strength (RSS) fingerprint and convolutional neural network-based algorithm, LocUNet, and demonstrated its state-of-the-art localization performance with respect to the widely adopted k-nearest neighbors (kNN) algorithm, and to state-of-the-art time of arrival (ToA) ranging-based methods. In the current work, we first recognize LocUNet's ability to learn the underlying prior distribution of the Rx position or Rx and transmitter (Tx) association preferences from the training data, and attribute its high performance to these. Conversely, we demonstrate that classical methods based on probabilistic approach, can greatly benefit from an appropriate incorporation of such prior information. Our studies also numerically prove LocUNet's close to optimal performance in many settings, by comparing it with the theoretically optimal formulations.

Foundations

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