Mixture modelling is becoming an increasingly important tool in the remote sensing community as researchers attempt to resolve sub-pixel, area information. This paper compares a well-established technique, Linear Spectral Mixture Models (LSMM), with a much newer idea based on data selection, Support Vector Machines (SVM). It is shown that the constrained least squares LSMM is equivalent to the linear SVM, which relies on proving that the LSMM algorithm possesses the "maximum margin" property. This in turn shows that the LSMM algorithm can be derived from the same optimality conditions as the linear SVM, which provides important insights about the role of the bias term and rank deficiency in the pure pixel matrix within the LSMM al...
Multiple endmember spectral mixture analysis (MESMA) has been widely applied for estimating fraction...
Abstract. As a supplement or an alternative to classification of hyperspectral image data linear and...
The fraction of vegetation cover (FVC) is often estimated by unmixing a linear mixture model (LMM) t...
Mixture modeling is becoming an increasingly important tool in the remote sensing community as resea...
Mixture modelling is becoming an increasingly important tool in the remote sensing community as rese...
This paper presents an improved spectral unmixing framework for remote sensing data interpretation. ...
KEY WORDS: classification of remote sensing image, linear spectral mixture model, fully constrained ...
Linear spectral mixture analysis (LSMA) has been widely used in subpixel analysis and mixed-pixel cl...
A wide range of methods for analysis of airborne- and satellite-derived imagery continues to be prop...
This report documents the algorithms used in the program MIXMOD to analyse mixed pixel data (assumin...
A linear support vector machine (LSVM) is based on deter-mining an optimum hyperplane that separates...
The objective of this dissertation is to investigate all the necessary components in spectral mixtur...
Classification of broad area features in satellite imagery is one of the most important applications...
Abstract—Linear spectral mixture analysis (LSMA) has re-ceived wide interests for spectral unmixing ...
Remote sensing technologies have been widely used in the contexts of land cover and land use. The im...
Multiple endmember spectral mixture analysis (MESMA) has been widely applied for estimating fraction...
Abstract. As a supplement or an alternative to classification of hyperspectral image data linear and...
The fraction of vegetation cover (FVC) is often estimated by unmixing a linear mixture model (LMM) t...
Mixture modeling is becoming an increasingly important tool in the remote sensing community as resea...
Mixture modelling is becoming an increasingly important tool in the remote sensing community as rese...
This paper presents an improved spectral unmixing framework for remote sensing data interpretation. ...
KEY WORDS: classification of remote sensing image, linear spectral mixture model, fully constrained ...
Linear spectral mixture analysis (LSMA) has been widely used in subpixel analysis and mixed-pixel cl...
A wide range of methods for analysis of airborne- and satellite-derived imagery continues to be prop...
This report documents the algorithms used in the program MIXMOD to analyse mixed pixel data (assumin...
A linear support vector machine (LSVM) is based on deter-mining an optimum hyperplane that separates...
The objective of this dissertation is to investigate all the necessary components in spectral mixtur...
Classification of broad area features in satellite imagery is one of the most important applications...
Abstract—Linear spectral mixture analysis (LSMA) has re-ceived wide interests for spectral unmixing ...
Remote sensing technologies have been widely used in the contexts of land cover and land use. The im...
Multiple endmember spectral mixture analysis (MESMA) has been widely applied for estimating fraction...
Abstract. As a supplement or an alternative to classification of hyperspectral image data linear and...
The fraction of vegetation cover (FVC) is often estimated by unmixing a linear mixture model (LMM) t...