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Blind Hyperspectral Unmixing using Dual Branch Deep Autoencoder with Orthogonal Sparse Prior

机译:使用具有正交稀疏先验的双分支深度自动编码器进行盲高光谱解混

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Blind hyperspectral unmixing has become an important task for hyperspectral applications. In this paper, we propose a dual branch autoencoder with a novel sparse prior to simultaneously extract endmembers and abundances from the raw HSI. The dual branch structure extends the linear mixing model by only modeling linear mixtures of the endmembers and treating the bilinear interactions as error. In this way, the proposed model doesn’t require the assumptions of explicit forms of bilinear interactions. The proposed sparse prior, named as orthogonal sparse prior, is based on the key observation that the abundance vector of one pixel is very sparse, there are often no more than two non-zero elements. Different from the conventional norm-based sparse prior which assumes the abundance maps are independent, the orthogonal sparse prior explores the orthogonality between the abundance maps. Extensive experiments on two real datasets show that the proposed method significantly and consistently outperforms the compared state-of-the-art methods, with up to 50% improvements.
机译:盲高光谱解混已经成为高光谱应用的重要任务。在本文中,我们提出了一种具有新颖稀疏性的双分支自动编码器,然后同时从原始HSI中提取端成员和丰度。双分支结构通过仅对末端成员的线性混合物建模并将双线性相互作用视为错误来扩展线性混合模型。这样,建议的模型无需假设双线性相互作用的显式形式。提出的稀疏先验,称为正交稀疏先验,是基于以下关键观察结果:一个像素的丰度矢量非常稀疏,通常不超过两个非零元素。与假定丰度图是独立的,基于常规基于规范的稀疏先验不同,正交稀疏先验探索了丰度图之间的正交性。在两个真实数据集上进行的大量实验表明,所提出的方法显着且始终优于已比较的最新方法,并提高了50%。

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