基于耦合字典学习的多模态图像处理

P. Song, M. Rodrigues
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引用次数: 1

摘要

在现实世界中,许多数据处理问题经常涉及与不同成像方式相关的异构图像。由于这些多模态图像源于同一现象,因此假设它们具有共同的属性或特征是现实的。在本文中,我们提出了一个基于耦合字典学习的多模态图像处理框架,以捕获不同图像模态之间的相似和差异。特别是,我们的框架可以在学习稀疏变换域(而不是原始像素域)中捕获不同图像模式(如边缘、角和其他基本基元)的有利结构相似性,这可以用于改进许多图像处理任务,如去噪、上漆或超分辨率。实际实验表明,使用我们的框架整合多模态信息带来了显著的好处。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi-Modal Image Processing Based on Coupled Dictionary Learning
In real-world scenarios, many data processing problems often involve heterogeneous images associated with different imaging modalities. Since these multimodal images originate from the same phenomenon, it is realistic to assume that they share common attributes or characteristics. In this paper, we propose a multi-modal image processing framework based on coupled dictionary learning to capture similaries and disparities between different image modalities. In particular, our framework can capture favorable structure similarities across different image modalities such as edges, corners, and other elementary primitives in a learned sparse transform domain, instead of the original pixel domain, that can be used to improve a number of image processing tasks such as denoising, inpainting, or super-resolution. Practical experiments demonstrate that incorporating multimodal information using our framework brings notable benefits.
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