HSCNN+: Advanced CNN-Based Hyperspectral Recovery from RGB Images

Zhan Shi, C. Chen, Zhiwei Xiong, Dong Liu, Feng Wu
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引用次数: 158

Abstract

Hyperspectral recovery from a single RGB image has seen a great improvement with the development of deep convolutional neural networks (CNNs). In this paper, we propose two advanced CNNs for the hyperspectral reconstruction task, collectively called HSCNN+. We first develop a deep residual network named HSCNN-R, which comprises a number of residual blocks. The superior performance of this model comes from the modern architecture and optimization by removing the hand-crafted upsampling in HSCNN. Based on the promising results of HSCNN-R, we propose another distinct architecture that replaces the residual block by the dense block with a novel fusion scheme, leading to a new network named HSCNN-D. This model substantially deepens the network structure for a more accurate solution. Experimental results demonstrate that our proposed models significantly advance the state-of-the-art. In the NTIRE 2018 Spectral Reconstruction Challenge, our entries rank the 1st (HSCNN-D) and 2nd (HSCNN-R) places on both the "Clean" and "Real World" tracks. (Codes are available at [clean-r], [realworld-r], [clean-d], and [realworld-d].)
HSCNN+:先进的基于cnn的RGB图像高光谱恢复
随着深度卷积神经网络(cnn)的发展,单幅RGB图像的高光谱恢复有了很大的改进。在本文中,我们提出了两种用于高光谱重建任务的高级cnn,统称为HSCNN+。我们首先开发了一个名为HSCNN-R的深度残差网络,该网络由多个残差块组成。该模型的优越性能来自于现代架构,并通过消除HSCNN中的手工上采样进行了优化。基于HSCNN-R的良好结果,我们提出了另一种独特的架构,用一种新颖的融合方案取代密集块的残差块,从而形成一个新的网络,称为HSCNN-D。该模型大大深化了网络结构,以获得更准确的解决方案。实验结果表明,我们提出的模型显著提高了技术水平。在整个2018年光谱重建挑战赛中,我们的参赛作品在“清洁”和“真实世界”轨道上分别排名第一(HSCNN-D)和第二(HSCNN-R)。(代码可在[clean-r], [realworld-r], [clean-d]和[realworld-d]处获得。)
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