Weighted lp -norm minimization algorithm based on hybrid internal and external priors
ID:118 Submission ID:19 View Protection:ATTENDEE Updated Time:2024-10-28 19:16:36 Hits:34 Poster Presentation

Start Time:Pending (Asia/Shanghai)

Duration:Pending

Session:[No Session] » [No Session Block]

Presentation File

Tips: The file permissions under this presentation are only for participants. You have not logged in yet and cannot view it temporarily.

Abstract
Under the Bayesian restoration framework, this paper aims at the problem of the inadequate accuracy of the sparse solution under the traditional convex regularization constraint, which leads to the loss of texture details and excessive edge smoothing in the recovered image, a new method is proposed. Firstly, the internal nonlocal self-similarity of the degraded image and the external nonlocal self-similarity in the clean dataset are used to construct similar block groups, which are subject to structured sparse coding, and the sparse coefficients are constrained by a weighted l-p penalty function;Secondly, by combining the sparse coefficients obtained in the previous step, an alternating minimization optimization method is designed to iteratively resolve the image restoration equations for computing a reasonable estimation for the original restored image. Simulation experiments verify the correctness and effectiveness of the proposed scheme.
Keywords
image denoising; group sparsity representation; dictionary learning; weighted l-p norm
Speaker
ZhangDonghua
Mr Anhui University

Submission Author
SunDong Anhui University
ZhangDonghua Anhui University
NingWan Anhui University
HuYong Anhui University
WangRu Anhui University
GaoQingwei Anhui University
Comment submit
Verification code Change another
All comments

Important Dates

15th August 2024   31st August 2024- Manuscript Submission

15th September 2024 - Acceptance Notification

1st October 2024 - Camera Ready Submission

1st October 2024  – Early Bird Registration

 

Contact Us

Website:

https://icsmd2024.aconf.org/

Email:
icsmd2024@163.com