Rain Removal via Shrinkage-Based Sparse Coding and Learned Rain Dictionary
Chang-Hwan Son, Xiao-Ping Zhang

TL;DR
This paper presents a novel rain removal method using shrinkage of sparse codes with learned rain and non-rain dictionaries, effectively reducing rain artifacts while preserving image details.
Contribution
It introduces a shrinkage-based sparse coding approach that jointly utilizes rain and non-rain dictionaries to improve rain removal and prevent edge artifacts.
Findings
Outperforms conventional rain removal methods in visual quality.
Effectively preserves image structures and details.
Reduces unwanted edge artifacts in non-rain regions.
Abstract
This paper introduces a new rain removal model based on the shrinkage of the sparse codes for a single image. Recently, dictionary learning and sparse coding have been widely used for image restoration problems. These methods can also be applied to the rain removal by learning two types of rain and non-rain dictionaries and forcing the sparse codes of the rain dictionary to be zero vectors. However, this approach can generate unwanted edge artifacts and detail loss in the non-rain regions. Based on this observation, a new approach for shrinking the sparse codes is presented in this paper. To effectively shrink the sparse codes in the rain and non-rain regions, an error map between the input rain image and the reconstructed rain image is generated by using the learned rain dictionary. Based on this error map, both the sparse codes of rain and non-rain dictionaries are used jointly to…
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Taxonomy
TopicsImage Enhancement Techniques · Image and Signal Denoising Methods · Advanced Image Processing Techniques
