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Journal ArticleDOI

A Maximum Entropy Approach to Unsupervised Mixed-Pixel Decomposition

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TLDR
This paper addresses the importance of the maximum entropy principle for mixed-pixel decomposition from a geometric point of view and demonstrates that when the given data present strong noise or when the endmember signatures are close to each other, the proposed method has the potential of providing more accurate estimates than the popular least-squares methods.
Abstract
Due to the wide existence of mixed pixels, the derivation of constituent components (endmembers) and their fractional proportions (abundances) at the subpixel scale has been given a lot of attention. The entire process is often referred to as mixed-pixel decomposition or spectral unmixing. Although various algorithms have been proposed to solve this problem, two potential issues still need to be further investigated. First, assuming the endmembers are known, the abundance estimation is commonly performed by employing a least-squares error criterion, which, however, makes the estimation sensitive to noise and outliers. Second, the mathematical intractability of the abundance non-negative constraint results in computationally expensive numerical approaches. In this paper, we propose an unsupervised decomposition method based on the classic maximum entropy principle, termed the gradient descent maximum entropy (GDME), aiming at robust and effective estimates. We address the importance of the maximum entropy principle for mixed-pixel decomposition from a geometric point of view and demonstrate that when the given data present strong noise or when the endmember signatures are close to each other, the proposed method has the potential of providing more accurate estimates than the popular least-squares methods (e.g., fully constrained least squares). We apply the proposed GDME to the subject of unmixing multispectral and hyperspectral data. The experimental results obtained from both simulated and real images show the effectiveness of the proposed method

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Citations
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Journal ArticleDOI

Supervised Nonlinear Spectral Unmixing Using a Postnonlinear Mixing Model for Hyperspectral Imagery

TL;DR: This paper presents a nonlinear mixing model for hyperspectral image unmixing that assumes that the pixel reflectances are nonlinear functions of pure spectral components contaminated by an additive white Gaussian noise.
Journal ArticleDOI

Blind Spectral Unmixing Based on Sparse Nonnegative Matrix Factorization

TL;DR: A novel measure (termed as S-measure) of sparseness using higher order norms of the signal vector is proposed in this paper, and features the physical significance.
Journal ArticleDOI

Hyperspectral Anomaly Detection Through Spectral Unmixing and Dictionary-Based Low-Rank Decomposition

TL;DR: This paper focuses on anomaly detection in hyperspectral images (HSIs) and proposes a novel detection algorithm based on spectral unmixing and dictionary-based low-rank decomposition, which achieves high detection rate while maintaining low false alarm rate regardless of the type of images tested.
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uDAS: An Untied Denoising Autoencoder With Sparsity for Spectral Unmixing

TL;DR: This paper proposes a so-called untied denoising autoencoder with sparsity, in which the encoder and decoder of the network are independent, and only the decoding of thenetwork is enforced to be nonnegative, and makes two critical additions to the network design.
Journal ArticleDOI

Spectral Unmixing of Hyperspectral Imagery Using Multilayer NMF

TL;DR: Results in comparison with previously proposed methods show that the multilayer approach can unmix data more effectively.
References
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Journal ArticleDOI

Information Theory and Statistical Mechanics. II

TL;DR: In this article, the authors consider statistical mechanics as a form of statistical inference rather than as a physical theory, and show that the usual computational rules, starting with the determination of the partition function, are an immediate consequence of the maximum-entropy principle.
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Vertex component analysis: a fast algorithm to unmix hyperspectral data

TL;DR: A new method for unsupervised endmember extraction from hyperspectral data, termed vertex component analysis (VCA), which competes with state-of-the-art methods, with a computational complexity between one and two orders of magnitude lower than the best available method.
Book

Theory of Reflectance and Emittance Spectroscopy

TL;DR: In this article, the authors present a review of vector calculus and functions of a complex variable and Fraunhoffer diffraction by a circular hole, and a miscellany of bidirectional reflectances and related quantities.
Journal ArticleDOI

Fully constrained least squares linear spectral mixture analysis method for material quantification in hyperspectral imagery

TL;DR: The authors present a fully constrained least squares (FCLS) linear spectral mixture analysis method for material quantification, where no closed form can be derived for this method and an efficient algorithm is developed to yield optimal solutions.
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