The matched subspace detector (MSD) is a classical subspace-based method for hyperspectral subpixel target detection. However, the model assumes that noise has the same variance over different bands, which is usually unrealistic in practice. In this letter, we relax the equal variance assumption and propose a matched subspace detector with heterogeneous noise (MSDH). In essence, the noise variances are different for different bands and they can be estimated by using iteratively reweighted least squares methods. Experiments on two benchmark real hyperspectral datasets demonstrate the superiority of MSDH over MSD for subpixel target detection
A Hyper-Spectral Image (HSI) has high spectral and low spatial resolution. As a result, most targets...
This paper deals with the sub-pixel target detection problem in hyper-spectral images. The problem ...
Due to significantly improved spectral resolution, hyperspectral imagery can now uncover many subtle...
The performance of subspace-based methods such as matched subspace detector (MSD) and MSD with inter...
The goal of this research is to develop a new algorithm for the detection of subpixel scale target m...
<p> Subpixel hyperspectral detection is a kind of method which tries to locate targets in a hypersp...
Real-time detection and identification of man-made objects or materials ("targets") from a...
Hyperspectral images (HSIs) possess non-negative properties for both hyperspectral signatures and ab...
Hyperspectral images (HSIs) possess non-negative properties for both hyperspectral signatures and ab...
The binary hypothesis testing (BHT) is one of the most important models in hyperspectral target dete...
<p>Hyperspectral target detection is an approach which tries to locate targets in a hyperspectral im...
This dissertation develops new approaches for improving the performance of hyperspectral target dete...
This paper offers improvements to adaptive matched filter (AMF) performance by addressing correlatio...
In this paper a new sub-pixel target detector for hyperspectral images, based on the Stochastic Mix...
This paper focuses on comparing three basis-vector selection techniques as applied to target detecti...
A Hyper-Spectral Image (HSI) has high spectral and low spatial resolution. As a result, most targets...
This paper deals with the sub-pixel target detection problem in hyper-spectral images. The problem ...
Due to significantly improved spectral resolution, hyperspectral imagery can now uncover many subtle...
The performance of subspace-based methods such as matched subspace detector (MSD) and MSD with inter...
The goal of this research is to develop a new algorithm for the detection of subpixel scale target m...
<p> Subpixel hyperspectral detection is a kind of method which tries to locate targets in a hypersp...
Real-time detection and identification of man-made objects or materials ("targets") from a...
Hyperspectral images (HSIs) possess non-negative properties for both hyperspectral signatures and ab...
Hyperspectral images (HSIs) possess non-negative properties for both hyperspectral signatures and ab...
The binary hypothesis testing (BHT) is one of the most important models in hyperspectral target dete...
<p>Hyperspectral target detection is an approach which tries to locate targets in a hyperspectral im...
This dissertation develops new approaches for improving the performance of hyperspectral target dete...
This paper offers improvements to adaptive matched filter (AMF) performance by addressing correlatio...
In this paper a new sub-pixel target detector for hyperspectral images, based on the Stochastic Mix...
This paper focuses on comparing three basis-vector selection techniques as applied to target detecti...
A Hyper-Spectral Image (HSI) has high spectral and low spatial resolution. As a result, most targets...
This paper deals with the sub-pixel target detection problem in hyper-spectral images. The problem ...
Due to significantly improved spectral resolution, hyperspectral imagery can now uncover many subtle...