Linear spectral mixture analysis (LSMA) has been widely used in subpixel analysis and mixed-pixel classification. One commonly used approach is based on either the least square error (LSE) criterion such as least squares LSMA or the signalto-noise ratio (SNR) such as orthogonal subspace projection (OSP). Unfortunately, it is known that such criteria are not necessarily optimal for pattern classification. This paper presents a new and alternative approach to LSMA, called Fisher's LSMA (FLSMA). It extends the well-known pure-pixel-based Fisher's linear discriminant analysis to LSMA. Interestingly, what can be done for the LSMA can be also developed for the FLSMA. Of particular interest are two types of constraints imposed on the LSMA, target ...
This is a library of interactive tools and functions for performing linear spectral mixture analysis...
Mixture modelling is becoming an increasingly important tool in the remote sensing community as rese...
End-member extraction could be considered as the most challenging stage of the spectral unmixing pro...
Mixture modelling is becoming an increasingly important tool in the remote sensing community as rese...
Mixture modeling is becoming an increasingly important tool in the remote sensing community as resea...
Linear Spectral Mixture Analysis (LSMA) has been widely used in the remote sensing community. It ass...
The objective of this dissertation is to investigate all the necessary components in spectral mixtur...
Abstract—Linear spectral mixture analysis (LSMA) has re-ceived wide interests for spectral unmixing ...
Abstract—An orthogonal subspace projection (OSP) method using linear mixture modeling was recently e...
Abstract. As a supplement or an alternative to classification of hyperspectral image data linear and...
Abstract—Over the past years, many algorithms have been de-veloped for multispectral and hyperspectr...
Sub-pixel classification is essential for the successful description of many land cover (LC) feature...
Two of the most challenging issues in the unsupervised linear spectral mixture analysis (ULSMA) are:...
Sub-pixel classification is essential for the successful description of many land cover (LC) feature...
KEY WORDS: classification of remote sensing image, linear spectral mixture model, fully constrained ...
This is a library of interactive tools and functions for performing linear spectral mixture analysis...
Mixture modelling is becoming an increasingly important tool in the remote sensing community as rese...
End-member extraction could be considered as the most challenging stage of the spectral unmixing pro...
Mixture modelling is becoming an increasingly important tool in the remote sensing community as rese...
Mixture modeling is becoming an increasingly important tool in the remote sensing community as resea...
Linear Spectral Mixture Analysis (LSMA) has been widely used in the remote sensing community. It ass...
The objective of this dissertation is to investigate all the necessary components in spectral mixtur...
Abstract—Linear spectral mixture analysis (LSMA) has re-ceived wide interests for spectral unmixing ...
Abstract—An orthogonal subspace projection (OSP) method using linear mixture modeling was recently e...
Abstract. As a supplement or an alternative to classification of hyperspectral image data linear and...
Abstract—Over the past years, many algorithms have been de-veloped for multispectral and hyperspectr...
Sub-pixel classification is essential for the successful description of many land cover (LC) feature...
Two of the most challenging issues in the unsupervised linear spectral mixture analysis (ULSMA) are:...
Sub-pixel classification is essential for the successful description of many land cover (LC) feature...
KEY WORDS: classification of remote sensing image, linear spectral mixture model, fully constrained ...
This is a library of interactive tools and functions for performing linear spectral mixture analysis...
Mixture modelling is becoming an increasingly important tool in the remote sensing community as rese...
End-member extraction could be considered as the most challenging stage of the spectral unmixing pro...