RGB-Guided Hyperspectral Image Upsampling

HyeokHyen Kwon, Yu-Wing Tai
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引用次数: 49

Abstract

Hyperspectral imaging usually lack of spatial resolution due to limitations of hardware design of imaging sensors. On the contrary, latest imaging sensors capture a RGB image with resolution of multiple times larger than a hyperspectral image. In this paper, we present an algorithm to enhance and upsample the resolution of hyperspectral images. Our algorithm consists of two stages: spatial upsampling stage and spectrum substitution stage. The spatial upsampling stage is guided by a high resolution RGB image of the same scene, and the spectrum substitution stage utilizes sparse coding to locally refine the upsampled hyperspectral image through dictionary substitution. Experiments show that our algorithm is highly effective and has outperformed state-of-the-art matrix factorization based approaches.
rgb制导高光谱图像上采样
由于成像传感器硬件设计的限制,高光谱成像通常缺乏空间分辨率。相反,最新的成像传感器捕获的RGB图像的分辨率是高光谱图像的数倍。本文提出了一种提高高光谱图像分辨率的算法。该算法包括两个阶段:空间上采样阶段和频谱替换阶段。空间上采样阶段以同一场景的高分辨率RGB图像为指导,光谱替换阶段利用稀疏编码,通过字典替换对上采样的高光谱图像进行局部细化。实验表明,我们的算法是非常有效的,并且优于最先进的基于矩阵分解的方法。
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