Publication
ICASSP 2024
Conference paper

Signal Transformer: Complex-Valued Attention and Meta-Learning for Signal Recognition

Abstract

Deep neural networks have been shown as a class of useful tools for addressing signal recognition issues in recent years, especially for identifying the nonlinear feature structures of signals. However, this power of most deep learning techniques heavily relies on an abundant amount of training data, so the performance of classic neural nets decreases sharply when the number of training data samples is small or unseen data are presented in the testing phase. This calls for an advanced strategy, i.e., model-agnostic meta-learning (MAML), which can capture the invariant representation of the data samples or signals. In this paper, inspired by the special structure of the signal, i.e., real and imaginary parts consisted in practical time-series signals, we propose a Complex-valued Attentional MEta Learner (CAMEL) for few-shot signal recognition in the complex domain by leveraging attention and meta-learning. Experimental results showcase the superiority of the proposed CAMEL compared with the state-of-the-art methods.

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Publication

ICASSP 2024

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