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Open AccessJournal ArticleDOI

An Augmented Linear Mixing Model to Address Spectral Variability for Hyperspectral Unmixing

TLDR
In this paper, a novel spectral mixture model, called the augmented linear mixing model (ARMLM), is proposed to address spectral variability by applying a data-driven learning strategy in inverse problems of hyperspectral unmixing.
Abstract
Hyperspectral imagery collected from airborne or satellite sources inevitably suffers from spectral variability, making it difficult for spectral unmixing to accurately estimate abundance maps. The classical unmixing model, the linear mixing model (LMM), generally fails to handle this sticky issue effectively. To this end, we propose a novel spectral mixture model, called the augmented LMM, to address spectral variability by applying a data-driven learning strategy in inverse problems of hyperspectral unmixing. The proposed approach models the main spectral variability (i.e., scaling factors) generated by variations in illumination or typography separately by means of the endmember dictionary. It then models other spectral variabilities caused by environmental conditions (e.g., local temperature and humidity and atmospheric effects) and instrumental configurations (e.g., sensor noise), and material nonlinear mixing effects, by introducing a spectral variability dictionary. To effectively run the data-driven learning strategy, we also propose a reasonable prior knowledge for the spectral variability dictionary, whose atoms are assumed to be low-coherent with spectral signatures of endmembers, which leads to a well-known low-coherence dictionary learning problem. Thus, a dictionary learning technique is embedded in the framework of spectral unmixing so that the algorithm can learn the spectral variability dictionary and estimate the abundance maps simultaneously. Extensive experiments on synthetic and real datasets are performed to demonstrate the superiority and effectiveness of the proposed method in comparison with the previous state-of-the-art methods.

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Citations
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Journal ArticleDOI

More Diverse Means Better: Multimodal Deep Learning Meets Remote Sensing Imagery Classification

TL;DR: A baseline solution to the aforementioned difficulty by developing a general multimodal deep learning (MDL) framework that is not only limited to pixel-wise classification tasks but also applicable to spatial information modeling with convolutional neural networks (CNNs).
Journal ArticleDOI

Graph Convolutional Networks for Hyperspectral Image Classification

TL;DR: A new minibatch GCN is developed that is capable of inferring out-of-sample data without retraining networks and improving classification performance, and three fusion strategies are explored: additive fusion, elementwise multiplicative fusion, and concatenation fusion to measure the obtained performance gain.
Journal ArticleDOI

Graph Convolutional Networks for Hyperspectral Image Classification

TL;DR: In this paper, a mini-batch graph convolutional network (called miniGCN) is proposed for hyperspectral image classification, which allows to train large-scale GCNs in a minibatch fashion.
Journal ArticleDOI

Hyperspectral Image Classification With Convolutional Neural Network and Active Learning

TL;DR: This article presents an active deep learning approach for HSI classification, which integrates both active learning and deep learning into a unified framework and achieves better performance on three benchmark HSI data sets with significantly fewer labeled samples.
References
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Journal ArticleDOI

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.
Journal ArticleDOI

Hyperspectral Unmixing Overview: Geometrical, Statistical, and Sparse Regression-Based Approaches

TL;DR: This paper presents an overview of un Mixing methods from the time of Keshava and Mustard's unmixing tutorial to the present, including Signal-subspace, geometrical, statistical, sparsity-based, and spatial-contextual unmixed algorithms.
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.
Journal ArticleDOI

Reflectance spectroscopy: Quantitative analysis techniques for remote sensing applications

TL;DR: In this paper, it was shown that the mean optical path length in a particulate surface is in roughly inverse proportion to the square root of the absorption coefficient, and that absorption bands are Gaussians in shape when plotted as true absorptance vs photon energy, although they have a smaller intensity.
Journal ArticleDOI

Hyperspectral Subspace Identification

TL;DR: This paper introduces a new minimum mean square error-based approach to infer the signal subspace in hyperspectral imagery, which is eigen decomposition based, unsupervised, and fully automatic.
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