Iterative Error Decimation for Syndrome-Based Neural Network Decoders

In this letter, we introduce a new syndrome-based decoder where a deep neural network (DNN) estimates the error pattern from the reliability and syndrome of the received vector. The proposed algorithm works by iteratively selecting the most reliable positions to be the error bits of the error pattern, updating the vector received when a new position of the error pattern is selected. Simulation results for the (63,45) and (63,36) BCH codes show that the proposed approach outperforms existing neural network decoders. In addition, the new decoder is flexible in that it can be applied on top of any existing syndrome-based DNN decoder without retraining.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
04/18/2023

Soft-Output Deep Neural Network-Based Decoding

Deep neural network (DNN)-based channel decoding is widely considered in...
research
08/19/2022

Dispersed Pixel Perturbation-based Imperceptible Backdoor Trigger for Image Classifier Models

Typical deep neural network (DNN) backdoor attacks are based on triggers...
research
06/23/2023

A new approach to generalisation error of machine learning algorithms: Estimates and convergence

In this work we consider a model problem of deep neural learning, namely...
research
08/12/2020

On Mean Absolute Error for Deep Neural Network Based Vector-to-Vector Regression

In this paper, we exploit the properties of mean absolute error (MAE) as...
research
05/25/2019

TurboNet: A Model-driven DNN Decoder Based on Max-Log-MAP Algorithm for Turbo Code

This paper presents TurboNet, a novel model-driven deep learning (DL) ar...
research
12/28/2020

Spread-Transform Dither Modulation Watermarking of Deep Neural Network

DNN watermarking is receiving an increasing attention as a suitable mean...
research
03/27/2023

Learning Iterative Neural Optimizers for Image Steganography

Image steganography is the process of concealing secret information in i...

Please sign up or login with your details

Forgot password? Click here to reset