Recently, sparse unmixing has received particular attention in the analysis of hyperspectral images (HSIs). However, traditional sparse unmixing ignores the different noise levels in different bands of HSIs, making such methods sensitive to different noise levels. To overcome this problem, the noise levels at different bands are assumed to be different in this paper, and a general sparse unmixing method based on noise level estimation (SU-NLE) under the sparse regression framework is proposed. First, the noise in each band is estimated on the basis of the multiple regression theory in hyperspectral applications, given that neighboring spectral bands are usually highly correlated. Second, the noise weighting matrix can be obtained from the e...
The problem of input noise affecting the subpixel classification is examined in order to assess its ...
The problem of input noise affecting the subpixel classification is examined in order to assess its ...
The problem of input noise affecting the subpixel classification is examined in order to assess its ...
Recently, sparse unmixing has received particular attention in the analysis of hyperspectral images ...
Most hyperspectral image (HSI) processing algorithms assume a signal to noise ratio model in their f...
Spectral unmixing aims at finding the spectrally pure constituent materials (also called endmembers)...
Spectral unmixing and denoising of hyperspectral images have always been regarded as separate proble...
The noise corruption problem commonly exists in hyperspectral images (HSIs) and severely affects the...
Spectral unmixing aims at identifying the pure spectral signatures in hyperspectral images and simul...
Spectral unmixing is an important technique in hyperspectral image applications. Recently, sparse re...
Spectral unmixing is an important technology in hyperspectral image applications. Recently, sparse r...
Hyperspectral unmixing, aiming to estimate the fractional abundances of pure spectral signatures in ...
Hyperspectral unmixing, aiming to estimate the fractional abundances of pure spectral signatures in ...
The problem of input noise affecting the subpixel classification is examined in order to assess its ...
Sparse unmixing is an important technique for hyperspectral data analysis. Most sparse unmixing algo...
The problem of input noise affecting the subpixel classification is examined in order to assess its ...
The problem of input noise affecting the subpixel classification is examined in order to assess its ...
The problem of input noise affecting the subpixel classification is examined in order to assess its ...
Recently, sparse unmixing has received particular attention in the analysis of hyperspectral images ...
Most hyperspectral image (HSI) processing algorithms assume a signal to noise ratio model in their f...
Spectral unmixing aims at finding the spectrally pure constituent materials (also called endmembers)...
Spectral unmixing and denoising of hyperspectral images have always been regarded as separate proble...
The noise corruption problem commonly exists in hyperspectral images (HSIs) and severely affects the...
Spectral unmixing aims at identifying the pure spectral signatures in hyperspectral images and simul...
Spectral unmixing is an important technique in hyperspectral image applications. Recently, sparse re...
Spectral unmixing is an important technology in hyperspectral image applications. Recently, sparse r...
Hyperspectral unmixing, aiming to estimate the fractional abundances of pure spectral signatures in ...
Hyperspectral unmixing, aiming to estimate the fractional abundances of pure spectral signatures in ...
The problem of input noise affecting the subpixel classification is examined in order to assess its ...
Sparse unmixing is an important technique for hyperspectral data analysis. Most sparse unmixing algo...
The problem of input noise affecting the subpixel classification is examined in order to assess its ...
The problem of input noise affecting the subpixel classification is examined in order to assess its ...
The problem of input noise affecting the subpixel classification is examined in order to assess its ...