2021
DOI: 10.48550/arxiv.2105.07768
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Self-Learning for Received Signal Strength Map Reconstruction with Neural Architecture Search

Abstract: In this paper, we present a Neural Network (NN) model based on Neural Architecture Search (NAS) and self-learning for received signal strength (RSS) map reconstruction out of sparse single-snapshot input measurements, in the case where data-augmentation by side deterministic simulations cannot be performed. The approach first finds an optimal NN architecture and simultaneously train the deduced model over some ground-truth measurements of a given (RSS) map. These ground-truth measurements along with the predic… Show more

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