Learning a collaborative multiscale dictionary based on robust empirical mode decomposition
Rui Chen, Huizhu Jia, Xiaodong Xie, Wen Gao

TL;DR
This paper introduces a novel multiscale dictionary learning method based on an improved empirical mode decomposition, enabling adaptive, noise-robust sparse image representations and effective denoising.
Contribution
It proposes a new data-driven multiscale dictionary learning framework that adaptively decomposes images and refines dictionaries using frequency clustering and regularization.
Findings
Outperforms existing methods in sparse image representation
Demonstrates superior denoising performance
Provides a robust, adaptive multiscale dictionary learning approach
Abstract
Dictionary learning is a challenge topic in many image processing areas. The basic goal is to learn a sparse representation from an overcomplete basis set. Due to combining the advantages of generic multiscale representations with learning based adaptivity, multiscale dictionary representation approaches have the power in capturing structural characteristics of natural images. However, existing multiscale learning approaches still suffer from three main weaknesses: inadaptability to diverse scales of image data, sensitivity to noise and outliers, difficulty to determine optimal dictionary structure. In this paper, we present a novel multiscale dictionary learning paradigm for sparse image representations based on an improved empirical mode decomposition. This powerful data-driven analysis tool for multi-dimensional signal can fully adaptively decompose the image into multiscale…
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Taxonomy
TopicsImage and Signal Denoising Methods · Photoacoustic and Ultrasonic Imaging · Sparse and Compressive Sensing Techniques
