Multimodal Image Super-resolution via Joint Sparse Representations induced by Coupled Dictionaries
Pingfan Song (Student Member, IEEE), Xin Deng (Student Member, IEEE),, Jo\~ao F. C. Mota (Member, IEEE), Nikos Deligiannis (Member, IEEE), Pier, Luigi Dragotti (Fellow, IEEE), and Miguel R. D. Rodrigues (Senior Member,, IEEE)

TL;DR
This paper introduces a novel multimodal image super-resolution method using joint sparse representations with coupled dictionaries, effectively leveraging multiple image modalities to improve resolution and robustness over existing techniques.
Contribution
It presents a new coupled dictionary learning framework for multimodal super-resolution that overcomes texture artifacts and enhances robustness compared to deep learning methods.
Findings
Outperforms state-of-the-art super-resolution techniques on real multimodal images.
Demonstrates robustness to noise better than deep-learning-based approaches.
Reduces texture copying artifacts common in other methods.
Abstract
Real-world data processing problems often involve various image modalities associated with a certain scene, including RGB images, infrared images or multi-spectral images. The fact that different image modalities often share certain attributes, such as certain edges, textures and other structure primitives, represents an opportunity to enhance various image processing tasks. This paper proposes a new approach to construct a high-resolution (HR) version of a low-resolution (LR) image given another HR image modality as reference, based on joint sparse representations induced by coupled dictionaries. Our approach, which captures the similarities and disparities between different image modalities in a learned sparse feature domain in \emph{lieu} of the original image domain, consists of two phases. The coupled dictionary learning phase is used to learn a set of dictionaries that couple…
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