Wang Liguo, Wei Fangjie. Band selection for hyperspectral imagery based on combination of genetic algorithm and ant colony algorithm[J]. Journal of Image and Graphics, 2013, 18(2): 235-242. DOI: 10.11834/jig.20130216.
With the development of remote sensing technology and imaging spectrometer
hyperspectral remote sensing images are widely used. However
the features of hyperspectral images have brought great difficulties for its classification and identification. One important research question is "How to select a group of bands from hundreds of bands of hyperspectral images
which are good for classification and identification?" In view of the above question
the existing band selection methods are analyzed
and a new method of hyperspectral imagery band selection is proposed
which is combined with genetic algorithm and ant colony algorithm. In the algorithm
the genetic algorithm is used to search for some better solutions quickly which initialize the information list of the ant colony algorithm. Then
the ant colony algorithm can effectively search for the best solution. In the part of the genetic algorithm
quaternary encoding is used
which makes encoding/decoding and genetic operation simple and uses less memory. In the part of the ant colony algorithm
subspace division is used to deal with hyperspectral images
reducing the search range of the ants. Which improves the search efficiency
and reduces the correlation and redundancy of the output band of hyperspectral image. The algorithm makes good use of the advantages of both genetic algorithm and ant colony algorithm and overcomes their defects
by consuming less time and outperfoming restraining method for band selection. An AVIRIS image was used for experiment with the proposed algorithm
which proves that this algorithm of hyperspectal dimension reduction is effective in terms of band selection performance and execution time consumption.