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首页> 外文期刊>Journal of Sensors >Superpixel Spectral Unmixing for Hyperspectral Image Superresolution Using a Coupled Encoder-Decoder Network
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Superpixel Spectral Unmixing for Hyperspectral Image Superresolution Using a Coupled Encoder-Decoder Network

机译:用于使用耦合编码器解码器网络的高光谱图像超级度的Superpixel光谱解密

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In this paper, we propose a novel hyperspectral image superresolution method based on superpixel spectral unmixing using a coupled encoder-decoder network. The hyperspectral image and multispectral images are fused to generate high-resolution hyperspectral images through the spectral unmixing framework with low-rank constraint. Specifically, the endmember and abundance information is extracted via a coupled encoder-decoder network integrating the priori for unmixing. The coupled network consists of two encoders and one shared decoder, where spectral information is preserved through the encoder. The multispectral image is clustered into superpixels to explore self-similarity, and then, the superpixels are unmixed to obtain an abundance matrix. By imposing a low-rank constraint on the abundance matrix, we further improve the superresolution performance. Experiments on the CAVE and Harvard datasets indicate that our superresolution method outperforms the other compared methods in terms of quantitative evaluation and visual quality.
机译:本文采用耦合编码器解码器网络提出了一种基于Superpixel光谱解密的新型高光谱图像超级化方法。高光谱图像和多光谱图像被融合以通过具有低秩约束的光谱解密框架产生高分辨率高光谱图像。具体地,通过集成PROMICING的先验的耦合编码器解码器网络提取端部和丰度信息。耦合网络由两个编码器和一个共享解码器组成,其中通过编码器保留光谱信息。将多光谱图像聚集成超像素以探索自相似性,然后,超像素被解混以获得丰度矩阵。通过对丰度矩阵对低秩约束施加,我们进一步提高了超级化性能。洞穴和哈佛数据集的实验表明,在定量评估和视觉质量方面,我们的超级化方法优于其他比较方法。

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