Book Chapter10.1007/978-3-031-20503-3_30
Evolutionary Multitasking Optimization for Multiobjective Hyperspectral Band Selection
TL;DR: In this article , the evolutionary multitasking optimization algorithm has the characteristics of processing multiple tasks at the same time to improve the search efficiency, and the evolutionary multi-task optimization algorithm is used as search strategy to select the band subset.
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Abstract: Hyperspectral remote sensing technology combines imaging technology and spectral technology, which greatly promotes the development of remote sensing science. However, the large amount of data, high redundancy and high data dimension of hyperspectral images will cause many problems such as “curse of dimensionality”. Feature extraction and band selection are two main methods to reduce the dimensionality and retain information for practical application. Compared with the feature extraction, band selection aims to select a band subset to reduce dimensionality, which can maintain the physical meaning of the original band. However, many band selection methods usually face many problems such as high computational cost, local optimization, poor classification accuracy and so on. In this paper, considering the evolutionary multitasking optimization algorithm has the characteristics of processing multiple tasks at the same time to improve the search efficiency, band selection is modeled as a multitasking optimization problem, and the evolutionary multitasking optimization algorithm is used as search strategy to select the band subset. Using hyperspectral remote sensing dataset as the experiment, the result shows that compared with other methods, the band subsets obtained by the evolutionary multitasking optimization algorithm have excellent overall classification accuracy and average classification accuracy, which will contribute to practical application.
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A joint band prioritization and band-decorrelation approach to band selection for hyperspectral image classification
TL;DR: A joint band-prioritization and band-decorrelation approach to band selection is considered for hyperspectral image classification and it is shown that the proposed band-selection method effectively eliminates a great number of insignificant bands.
Clustering-Based Hyperspectral Band Selection Using Information Measures
TL;DR: This paper presents a technique for dimensionality reduction to deal with hyperspectral images based on a hierarchical clustering structure to group bands to minimize the intracluster variance and maximize the intercluster variance.