Proximal Mapping-Incorporated Deep Autoencoder Network with Momentum Acceleration Method for Image Denoising

In the field of image processing, autoencoder networks have emerged as potent approaches for image denoising. However, traditional autoencoder networks often struggle with imprecise noise modeling and slower training convergence, which hinder their denoising performance. To address these limitations...

Full description

Saved in:
Bibliographic Details
Published in:Data Driven Control and Learning Systems Conference (Online) pp. 1322 - 1327
Main Authors: Zhao, Yang, Li, Ming, Huang, Meng, Zang, Qiyan, Wang, Lele, Zhang, Jian, Zhang, Heng
Format: Conference Proceeding
Language:English
Published: IEEE 09.05.2025
Subjects:
ISSN:2767-9861
Online Access:Get full text
Tags: Add Tag
No Tags, Be the first to tag this record!
Description
Summary:In the field of image processing, autoencoder networks have emerged as potent approaches for image denoising. However, traditional autoencoder networks often struggle with imprecise noise modeling and slower training convergence, which hinder their denoising performance. To address these limitations, we propose a novel image denoising autoencoder network incorporated with the proximal mapping operator and the momentum acceleration technology. It adopts threefold ideas: 1) a deep autoencoder network that fully extracting latent features for precise reconstruction; 2) a proximal mapping operator to handle ℓ 1 -norm regularization problem, leading to a stable and sparse representation of noise; and 3) the momentum acceleration scheme coupled with mini-batch gradient descent algorithm to accelerate training convergence. Experimental results on real images demonstrate that our proposed autoencoder network significantly outperforms existing approaches.
ISSN:2767-9861
DOI:10.1109/DDCLS66240.2025.11065628