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Adversarial Networks for Scale Feature-Attention Spectral Image Reconstruction from a Single RGB

机译:对抗网络用于从单个RGB重构尺度特征关注光谱图像

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摘要

Hyperspectral images reconstruction focuses on recovering the spectral information from a single RGBimage. In this paper, we propose two advanced Generative Adversarial Networks (GAN) for the heavily underconstrained inverse problem. We first propose scale attention pyramid UNet (SAPUNet), which uses U-Net with dilated convolution to extract features. We establish the feature pyramid inside the network and use the attention mechanism for feature selection. The superior performance of this model is due to the modern architecture and capturing of spatial semantics. To provide a more accurate solution, we propose another distinct architecture, named W-Net, that builds one more branch compared to U-Net to conduct boundary supervision. SAPUNet and scale attention pyramid WNet (SAPWNet) provide improvements on the Interdisciplinary Computational Vision Lab at Ben Gurion University (ICVL) datasetby 42% and 46.6%, and 45% and 50% in terms of root mean square error (RMSE) and relative RMSE, respectively. The experimental results demonstrate that our proposed models are more accurate than the state-of-the-art hyperspectral recovery methods
机译:高光谱图像重建着重于从单个RGB图像中恢复光谱信息。在本文中,我们针对严重不足的逆问题提出了两个高级的生成对抗网络(GAN)。我们首先提出了规模注意金字塔UNet(SAPUNet),它使用具有扩展卷积的U-Net来提取特征。我们在网络内部建立特征金字塔,并使用注意力机制进行特征选择。该模型的卓越性能归功于现代架构和对空间语义的捕获。为了提供更准确的解决方案,我们提出了另一种独特的架构,称为W-Net,与U-Net相比,该架构又建立了一个分支机构以进行边界监督。 SAPUNet和规模关注金字塔WNet(SAPWNet)在本古里安大学(ICVL)数据集的跨学科计算视觉实验室提供了42%和46.6%的改进,在均方根误差(RMSE)和相对RMSE方面分别提高了45%和50% , 分别。实验结果表明,我们提出的模型比最新的高光谱恢复方法更准确

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