Nonlinear Hyperspectral Unmixing based on Multilinear Mixing Model using
Convolutional Autoencoders
- URL: http://arxiv.org/abs/2303.08156v1
- Date: Tue, 14 Mar 2023 18:11:52 GMT
- Title: Nonlinear Hyperspectral Unmixing based on Multilinear Mixing Model using
Convolutional Autoencoders
- Authors: Tingting Fang, Fei Zhu and Jie Chen
- Abstract summary: We propose a novel autoencoder-based network for unsupervised unmixing based on reflection.
Experiments on both the synthetic and real datasets demonstrate the effectiveness of the proposed method.
- Score: 6.867229549627128
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: Unsupervised spectral unmixing consists of representing each observed pixel
as a combination of several pure materials called endmembers with their
corresponding abundance fractions. Beyond the linear assumption, various
nonlinear unmixing models have been proposed, with the associated optimization
problems solved either by traditional optimization algorithms or deep learning
techniques. Current deep learning-based nonlinear unmixing focuses on the
models in additive, bilinear-based formulations. By interpreting the reflection
process using the discrete Markov chain, the multilinear mixing model (MLM)
successfully accounts for the up to infinite-order interactions between
endmembers. However, to simulate the physics process of MLM by neural networks
explicitly is a challenging problem that has not been approached by far. In
this article, we propose a novel autoencoder-based network for unsupervised
unmixing based on MLM. Benefitting from an elaborate network design, the
relationships among all the model parameters {\em i.e.}, endmembers,
abundances, and transition probability parameters are explicitly modeled. There
are two modes: MLM-1DAE considers only pixel-wise spectral information, and
MLM-3DAE exploits the spectral-spatial correlations within input patches.
Experiments on both the synthetic and real datasets demonstrate the
effectiveness of the proposed method as it achieves competitive performance to
the classic solutions of MLM.
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