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首页> 外文期刊>Selected Topics in Signal Processing, IEEE Journal of >LSTM-DNN Based Autoencoder Network for Nonlinear Hyperspectral Image Unmixing
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LSTM-DNN Based Autoencoder Network for Nonlinear Hyperspectral Image Unmixing

机译:基于LSTM-DNN基于AuteNiCoder网络,用于非线性高光谱图像解密

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摘要

Blind hyperspectral unmixing is an important technique in hyperspectral image analysis, aiming at estimating endmembers and their respective fractional abundances. Consider the limitations of using the linear model, nonlinear unmixing methods have been studied under different model assumptions. However, existing nonlinear unmixing algorithms do not fully exploit spectral and spatial correlation information. This paper proposes a nonsymmetric autoencoder network to overcome this issue. The proposed scheme benefits from the universal modeling ability of deep neural networks and enables to learn the nonlinear relation from the data. Particularly, the long short-term memory network (LSTM) structure is included to capture spectral correlation information, and a spatial regularization is introduced to improve the spatial continuity of results. An attention mechanism is also used to further enhance the unmixing performance. Experiments with synthetic and real data are conducted to illustrate the effectiveness of the proposed method.
机译:盲光学光谱解密是高光谱图像分析中的重要技术,旨在估计终点和它们各自的分数丰富。考虑使用线性模型的局限性,在不同模型假设下已经研究了非线性解密方法。然而,现有的非线性解密算法没有完全利用光谱和空间相关信息。本文提出了一个非对称的AutoEncoder网络来克服这个问题。拟议的计划从深神经网络的普遍建模能力中受益,并且能够从数据中学习非线性关系。特别地,包括长短期存储器网络(LSTM)结构以捕获光谱相关信息,并引入空间正则化以提高结果的空间连续性。注意机制也用于进一步提高未混合性能。进行合成和实际数据的实验以说明所提出的方法的有效性。

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