1. SHBO-based U-Net for image segmentation and FSHBO-enabled DBN for classification using hyperspectral image.
- Author
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Subba Reddy, Tatireddy, Krishna Reddy, V. V., Vijaya Kumar Reddy, R., Kolli, Chandra Sekhar, Sitharamulu, V., and Chandrababu, Majjaru
- Subjects
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REMOTE sensing , *FEATURE selection , *HYPERSPECTRAL imaging systems , *CLASSIFICATION , *BADGERS , *SNAKES - Abstract
Hyper spectral imaging (HSI) is an advanced and fascinating remote sensing method in various domains. Every sample in HS remote sensing images possesses high-size features and has a massive amount of spatial and spectral data that enhances the complexity of feature selection and mining. Also, it improves the interpretational complications and thus surpasses the prediction accuracy of the system. To counterpart such issues, this article introduces an innovative system for HSI categorization wielding introduced Fractional Snake Honey Badger Optimization (FSHBO). Here, image segmentation is done through U-Net, which is trained by Snake Honey Badger Optimization (SHBO). The Deep Belief Network (DBN) is employed for HSI classification that outputs the pixel-wise classified result and this DBN is efficiently tuned using the proposed FSHBO. It is recorded that the proposed FSHBO-DBN has outperformed diverse classical models in terms of accuracy of 0.907, sensitivity of 0.914, and specificity of 0.904. [ABSTRACT FROM AUTHOR]
- Published
- 2024
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