Due to the spatial-resolution limitation, mixed pixels containing energy reflected from more than one type of ground objects are widely present in remote sensing images, which often results in inefficient quantitative analysis. To effectively decompose such mixtures, a fully constrained linear unmixing algorithm based on a multichannel Hopfield neural network (MHNN) is proposed in this letter. The proposed MHNN algorithm is actually a Hopfield-based architecture which handles all the pixels in an image synchronously, instead of considering a per-pixel procedure. Due to the synchronous unmixing property of MHNN, a noise energy percentage (NEP) stopping criterion which utilizes the signal-to-noise ratio is proposed to obtain optimal results f...
Superresolution mapping is a set of techniques to increase the spatial resolution of a land cover ma...
An image fusion algorithm, based upon spectral mixture analysis, is presented. The algorithm combine...
Hyperspectral remote sensing technology has a strong capability for ground object detection due to t...
Conference on Satellite Data Compression, Communication, and Processing IV, California, U.S.A., Augu...
Urban surfaces are highly inhomogeneous because of the high spatial and spectral diversity of man-ma...
This paper proposes a supervised change detection technique for multitemporal remote sensing images....
Abstract — Many available techniques for spectral mixture analysis involve the separation of mixed p...
Mapping urban surfaces using Earth Observation data is one the most challenging tasks of remote sens...
Neural networks (NNs) are recognized as very effective techniques when facing complex retrieval task...
Summarization: The application of neural network technology to multichannel image processing is pres...
Signals acquired by sensors in the real world are non-linear combinations, requiring non-linear mixt...
Abstract—As the initial stage of a supervised classification, the quality of training has a signific...
Mixture modelling is becoming an increasingly important tool in the remote sensing community as rese...
Hyperspectral image processing is one of the trending techniques used in many fields such as remote ...
Spectral unmixing is a key process in identifying spectral signature of materials and quantifying th...
Superresolution mapping is a set of techniques to increase the spatial resolution of a land cover ma...
An image fusion algorithm, based upon spectral mixture analysis, is presented. The algorithm combine...
Hyperspectral remote sensing technology has a strong capability for ground object detection due to t...
Conference on Satellite Data Compression, Communication, and Processing IV, California, U.S.A., Augu...
Urban surfaces are highly inhomogeneous because of the high spatial and spectral diversity of man-ma...
This paper proposes a supervised change detection technique for multitemporal remote sensing images....
Abstract — Many available techniques for spectral mixture analysis involve the separation of mixed p...
Mapping urban surfaces using Earth Observation data is one the most challenging tasks of remote sens...
Neural networks (NNs) are recognized as very effective techniques when facing complex retrieval task...
Summarization: The application of neural network technology to multichannel image processing is pres...
Signals acquired by sensors in the real world are non-linear combinations, requiring non-linear mixt...
Abstract—As the initial stage of a supervised classification, the quality of training has a signific...
Mixture modelling is becoming an increasingly important tool in the remote sensing community as rese...
Hyperspectral image processing is one of the trending techniques used in many fields such as remote ...
Spectral unmixing is a key process in identifying spectral signature of materials and quantifying th...
Superresolution mapping is a set of techniques to increase the spatial resolution of a land cover ma...
An image fusion algorithm, based upon spectral mixture analysis, is presented. The algorithm combine...
Hyperspectral remote sensing technology has a strong capability for ground object detection due to t...