Hyperspectral Image Band Selection Based on CNN Embedded GA (CNNeGA).

IEEE J. Sel. Top. Appl. Earth Obs. Remote. Sens.(2023)

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摘要
Hyperspectral images (HSIs) are a powerful source of reliable data in various remote sensing applications. But due to the large number of bands, HSI has information redundancy, and methods are often used to reduce the number of spectral bands. Band selection (BS) is used as a preprocessing solution to reduce data volume, increase processing speed, and improve methodology accuracy. However, most conventional BS approaches are unable to fully explain the interaction between spectral bands and evaluate the representation and redundancy of the selected band subset. This study first examines a supervised BS method that allows the selection of the required number of bands. A deep network with 3D-convolutional layers embedded in a genetic algorithm (GA). The GA uses embedded 3D-CNN (CNNeGA) as a fitness function. GA also considers the parent check box. The parent check box (parent subbands) is designed to make genetic operators more effective. In addition, the effectiveness of increasing the attention layer to a 3D-CNN and converting this model to spike neural networks has been investigated in terms of accuracy and complexity over time. The evaluation of the proposed method and the obtained results are satisfactory. The accuracy improved from 6% to 21%. Accuracy between 90% and 99% has been obtained in each evaluation mode.
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关键词
Genetic algorithms,Hyperspectral imaging,Feature extraction,Data models,Principal component analysis,Task analysis,Redundancy,Attention layer,band selection (BS),convolution neural networks (CNNs),embedded algorithm,genetic algorithm (GA),hyperspectral image (HSI),spiking neural networks (SNNs)
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