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基于端到端学习从原始镶嵌图像进行高光谱成像。

Hyperspectral imaging from a raw mosaic image with end-to-end learning.

作者信息

Fu Hao, Bian Liheng, Cao Xianbin, Zhang Jun

出版信息

Opt Express. 2020 Jan 6;28(1):314-324. doi: 10.1364/OE.372746.

Abstract

Hyperspectral imaging provides rich spatial-spectral-temporal information with wide applications. However, most of the existing hyperspectral imaging systems require light splitting/filtering devices for spectral modulation, making the system complex and expensive, and sacrifice spatial or temporal resolution. In this paper, we report an end-to-end deep learning method to reconstruct hyperspectral images directly from a raw mosaic image. It saves the separate demosaicing process required by other methods, which reconstructs the full-resolution RGB data from the raw mosaic image. This reduces computational complexity and accumulative error. Three different networks were designed based on the state-of-the-art models in literature, including the residual network, the multiscale network and the parallel-multiscale network. They were trained and tested on public hyperspectral image datasets. Benefiting from the parallel propagation and information fusion of different-resolution feature maps, the parallel-multiscale network performs best among the three networks, with the average peak signal-to-noise ratio achieving 46.83dB. The reported method can be directly integrated to boost an RGB camera for hyperspectral imaging.

摘要

高光谱成像提供了丰富的空间 - 光谱 - 时间信息,具有广泛的应用。然而,现有的大多数高光谱成像系统需要分光/滤波装置进行光谱调制,这使得系统复杂且昂贵,并且牺牲了空间或时间分辨率。在本文中,我们报告了一种端到端的深度学习方法,可直接从原始马赛克图像重建高光谱图像。它省去了其他方法所需的单独去马赛克过程,其他方法是从原始马赛克图像重建全分辨率RGB数据。这降低了计算复杂度和累积误差。基于文献中的先进模型设计了三种不同的网络,包括残差网络、多尺度网络和平行多尺度网络。它们在公共高光谱图像数据集上进行了训练和测试。受益于不同分辨率特征图的并行传播和信息融合,平行多尺度网络在这三个网络中表现最佳,平均峰值信噪比达到46.83dB。所报道的方法可以直接集成到RGB相机中以实现高光谱成像。

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