In this research, we study a new metaheuristic algorithm called Moth–Flame Optimization (MFO) for hyperspectral band selection. With the hundreds of highly correlated narrow spectral bands, the number of training samples required to train a statistical classifier is high. Thus, the problem is to select a subset of bands without compromising the classification accuracy. One of the ways to solve this problem is to model an objective function that measures class separability and utilize it to arrive at a subset of bands. In this research, we studied MFO to select optimal spectral bands for classification. MFO is inspired by the behavior of moths with respect to flames, which is the navigation method of moths in nature called transverse orienta...
A band selection method based on two layers selection (TLS) strategy, which forms an optimal subset ...
An important problem in processing multispectral / hyperspectral imagery consists in the design of m...
This manuscript presents a novel methodology for band selection (BS) for hyperspectral sensors (HSs)...
Identification of optimal spectral bands often involves collecting in-field spectral signatures foll...
Due to their similar color and material variability, some ground objects have similar characteristic...
Abstract—Hyperspectral images have been proved to be effec-tive for a wide range of applications; ho...
Although hyperspectral images acquired by on-board satellites provide information from a wide range ...
Swarm intelligence algorithms have been widely used in the dimensional reduction of hyperspectral re...
Hyperspectral data offer refined spectral discrimination of ground targets, but come at a substantia...
International audienceSpectral optimization consists in identifying the most relevant band subset fo...
Band selection is an important preprocessing step for hyperspectral image processing. Many valid cri...
This paper presents a practical supervised band selection procedure for airborne imaging spectromete...
In the most applications in remote sensing, there is no need to use all of available data, such as u...
The high dimensionality of hyperspectral images (HSIs) brings great difficulty for their later data ...
Processing hyperspectral image data can be computationally expensive and difficult to employ for rea...
A band selection method based on two layers selection (TLS) strategy, which forms an optimal subset ...
An important problem in processing multispectral / hyperspectral imagery consists in the design of m...
This manuscript presents a novel methodology for band selection (BS) for hyperspectral sensors (HSs)...
Identification of optimal spectral bands often involves collecting in-field spectral signatures foll...
Due to their similar color and material variability, some ground objects have similar characteristic...
Abstract—Hyperspectral images have been proved to be effec-tive for a wide range of applications; ho...
Although hyperspectral images acquired by on-board satellites provide information from a wide range ...
Swarm intelligence algorithms have been widely used in the dimensional reduction of hyperspectral re...
Hyperspectral data offer refined spectral discrimination of ground targets, but come at a substantia...
International audienceSpectral optimization consists in identifying the most relevant band subset fo...
Band selection is an important preprocessing step for hyperspectral image processing. Many valid cri...
This paper presents a practical supervised band selection procedure for airborne imaging spectromete...
In the most applications in remote sensing, there is no need to use all of available data, such as u...
The high dimensionality of hyperspectral images (HSIs) brings great difficulty for their later data ...
Processing hyperspectral image data can be computationally expensive and difficult to employ for rea...
A band selection method based on two layers selection (TLS) strategy, which forms an optimal subset ...
An important problem in processing multispectral / hyperspectral imagery consists in the design of m...
This manuscript presents a novel methodology for band selection (BS) for hyperspectral sensors (HSs)...