Combining Deep Learning and Linear Processing for Modulation Classification and Symbol Decoding
Samer Hanna, Chris Dick, Danijela Cabric

TL;DR
This paper introduces a hybrid neural network architecture that combines deep learning with linear signal processing to improve modulation classification and symbol decoding efficiency, accuracy, and interpretability in wireless communications.
Contribution
It presents a novel hybrid approach that integrates deep learning with linear processing for better scalability and insight in modulation classification and symbol decoding.
Findings
Outperforms state-of-the-art deep learning networks in modulation classification.
Achieves good accuracy in signal distortion estimation and symbol error rate.
Leverages deep learning power while maintaining efficiency of traditional methods.
Abstract
Deep learning has been recently applied to many problems in wireless communications including modulation classification and symbol decoding. Many of the existing end-to-end learning approaches demonstrated robustness to signal distortions like frequency and timing errors, and outperformed classical signal processing techniques with sufficient training. However, deep learning approaches typically require hundreds of thousands of floating points operations for inference, which is orders of magnitude higher than classical signal processing approaches and thus do not scale well for long sequences. Additionally, they typically operate as a black box and without insight on how their final output was obtained, they can't be integrated with existing approaches. In this paper, we propose a novel neural network architecture that combines deep learning with linear signal processing typically done…
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