no code implementations • 3 Nov 2022 • Emre Ozfatura, Yulin Shao, Amin Ghazanfari, Alberto Perotti, Branislav Popovic, Deniz Gunduz
Deep neural network (DNN)-assisted channel coding designs, such as low-complexity neural decoders for existing codes, or end-to-end neural-network-based auto-encoder designs are gaining interest recently due to their improved performance and flexibility; particularly for communication scenarios in which high-performing structured code designs do not exist.
no code implementations • 19 Jun 2022 • Emre Ozfatura, Yulin Shao, Alberto Perotti, Branislav Popovic, Deniz Gunduz
Deep learning based channel code designs have recently gained interest as an alternative to conventional coding algorithms, particularly for channels for which existing codes do not provide effective solutions.
no code implementations • 30 May 2022 • Yulin Shao, Emre Ozfatura, Alberto Perotti, Branislav Popovic, Deniz Gunduz
The training methods can potentially be generalized to other wireless communication applications with machine learning.
no code implementations • 22 Dec 2021 • Mahdi Boloursaz Mashhadi, Deniz Gunduz, Alberto Perotti, Branislav Popovic
We present a new deep-neural-network (DNN) based error correction code for fading channels with output feedback, called deep SNR-robust feedback (DRF) code.