2020
DOI: 10.48550/arxiv.2005.04226
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DeepFIR: Addressing the Wireless Channel Action in Physical-Layer Deep Learning

Francesco Restuccia,
Salvatore D'Oro,
Amani Al-Shawabka
et al.

Abstract: Deep learning can be used to classify waveform characteristics (e.g., modulation) with accuracy levels that are hardly attainable with traditional techniques. Recent research has demonstrated that one of the most crucial challenges in wireless deep learning is to counteract the channel action, which may significantly alter the waveform features. The problem is further exacerbated by the fact that deep learning algorithms are hardly re-trainable in real time due to their sheer size. This paper proposes DeepFIR,… Show more

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Cited by 1 publication
(1 citation statement)
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References 31 publications
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“…We have developed a novel strategy for working with complex (I and Q) information in our tokenization module, inspired by the DeepFIR [20] model. This model has shown its effectiveness in AMR tasks by using a complex CNN layer with complex weights and biases.…”
Section: Transiq-complexmentioning
confidence: 99%
“…We have developed a novel strategy for working with complex (I and Q) information in our tokenization module, inspired by the DeepFIR [20] model. This model has shown its effectiveness in AMR tasks by using a complex CNN layer with complex weights and biases.…”
Section: Transiq-complexmentioning
confidence: 99%