Hyperspectral Vegetation Feature Band Selection Based on Quantum Genetic Spectral Angle Mapper Algorithm

被引:0
|
作者
Deng, Zhi-gang [1 ,2 ]
Zhao, Hong-mei [2 ]
Zha, Wen-xian [2 ]
Tang, Lin-ling [2 ]
Tian, Ye [2 ]
机构
[1] East China Jiaotong Univ, Sch Informat & Software Engn, Nanchang 330013, Peoples R China
[2] Jiangxi Normal Univ, Minist Educ, Key Lab Poyang Lake Wetland & Watershed Res, Nanchang 330022, Peoples R China
关键词
Quantum genetic algorithm (QGA); Spectral angle mapper (SAM); Wetland vegetations; Hyperspetral band selection;
D O I
10.3964/j.issn.1000-0593(2024)11-3258-08
中图分类号
O433 [光谱学];
学科分类号
0703 ; 070302 ;
摘要
Hyperspectral data collects essential and detailed spectral responses from ground objects through hundreds of contiguous narrow spectral wavelength bands and is widely used for vegetation fine classification, However, classification accuracy is not often satisfactory in a cost effective way when using all original hyperspectral information (HSI) for practical applications because of its strong correlation and redundantness. Therefore, feature wavelength/band selection is crucial and difficult for HSI applications, Previous band selection methods have some drawbacks, such as low computation efficiency, lack of interpretability, being trapped in local optimization, and so on. Our study focuses on the hyperspectral feature band selection for the vegetation species fine classification of Poyang Lake wetland in continuous extreme drought conditions. Hyperspectral Jeflectance data of 10 plant species, such as Green polygonum. Artemisia Selengensis. Astragalus sinicus, Rorippa globose. Rumex trisetifer Stokes. Sonoma alopecurus. Phalaris arundinacea. Carexcinerascens. Miscanthus sacchariflorus and Phragmites Justralis collected by SVC spectrometer (SVC HR1024) is used in this work. We introduce the Quantum Genetic Algorithm QGA), which is combined with Spectral Angle Mapper based k Nearest Neighbors classifier (KNN SAM), and propose a new feature band selection algorithm. i. e. QGA KNN SAM, to select feature wavelength. Then. the K-Medoide clustering Algorithm to determine the feature band interval. In our experiment, the classification performance of the proposed QGA KNN SAM is compared with the traditional GA KNN SAM algorithm. QGA KNN SAM generates an average classification accuracy value of 95% higher than GA KNN SAM (90%). Moreover, QGA KNN SAM generates the feature bands range between 589 similar to 634.4 nm. which is relatively more concentrated than achieved by GA KNN SAM (1107.6 similar to 1.205 nm), A wavelength Band that reflects the surface hydrological characteristics and vegetation should be considered in the fine classification of wetland vegetation, which is different from the fine classification of traditional vegetation, Compared with the band distribution of commonly used multispectral and hyperspectral satellite images, it is found that the QGA KNN SAM algorithm selects feature hands with better directionality and interpretability. This algorithm improves the computational efficiency and interpretability of band selection and compensates for the lack of the QGA method in band selection research providing methodological and theoretical support for similar studies.
引用
收藏
页码:3258 / 3265
页数:8
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