Advances in hyperspectral image and signal processing: A comprehensive overview of the state of the art
Recent advances in airborne and spaceborne hyperspectral imaging technology have
provided end users with rich spectral, spatial, and temporal information. They have made a …
provided end users with rich spectral, spatial, and temporal information. They have made a …
Spectral variability in hyperspectral data unmixing: A comprehensive review
The spectral signatures of the materials contained in hyperspectral images, also called
endmembers (EMs), can be significantly affected by variations in atmospheric, illumination …
endmembers (EMs), can be significantly affected by variations in atmospheric, illumination …
Towards the spectral restoration of shadowed areas in hyperspectral images based on nonlinear unmixing
This work proposes a new shadow restoration method for hyperspectral images based on
nonlinear unmixing. A physical model is introduced to estimate the shadowed spectrum from …
nonlinear unmixing. A physical model is introduced to estimate the shadowed spectrum from …
DAEN: Deep autoencoder networks for hyperspectral unmixing
Spectral unmixing is a technique for remotely sensed image interpretation that expresses
each (possibly mixed) pixel as a combination of pure spectral signatures (endmembers) and …
each (possibly mixed) pixel as a combination of pure spectral signatures (endmembers) and …
CyCU-Net: Cycle-consistency unmixing network by learning cascaded autoencoders
In recent years, deep learning (DL) has attracted increasing attention in hyperspectral
unmixing (HU) applications due to its powerful learning and data fitting ability. The …
unmixing (HU) applications due to its powerful learning and data fitting ability. The …
A review of nonlinear hyperspectral unmixing methods
In hyperspectral unmixing, the prevalent model used is the linear mixing model, and a large
variety of techniques based on this model has been proposed to obtain endmembers and …
variety of techniques based on this model has been proposed to obtain endmembers and …
UnDIP: Hyperspectral unmixing using deep image prior
In this article, we introduce a deep learning-based technique for the linear hyperspectral
unmixing problem. The proposed method contains two main steps. First, the endmembers …
unmixing problem. The proposed method contains two main steps. First, the endmembers …
A signal processing perspective on hyperspectral unmixing: Insights from remote sensing
Blind hyperspectral unmixing (HU), also known as unsupervised HU, is one of the most
prominent research topics in signal processing (SP) for hyperspectral remote sensing [1],[2] …
prominent research topics in signal processing (SP) for hyperspectral remote sensing [1],[2] …
Hyperspectral unmixing using a neural network autoencoder
In this paper, we present a deep learning based method for blind hyperspectral unmixing in
the form of a neural network autoencoder. We show that the linear mixture model implicitly …
the form of a neural network autoencoder. We show that the linear mixture model implicitly …
高光谱图像处理与信息提取前沿.
张兵 - Journal of Remote Sensing, 2016 - search.ebscohost.com
高光谱遥感是对地观测的重要手段, 高光谱图像处理与信息提取技术则是高光谱遥感领域的核心
研究内容之一. 本文简要介绍了高光谱遥感的主要特点, 系统梳理了高光谱图像处理与信息提取 …
研究内容之一. 本文简要介绍了高光谱遥感的主要特点, 系统梳理了高光谱图像处理与信息提取 …