2023
DOI: 10.3390/land12051022
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A Deep Feature Fusion Method for Complex Ground Object Classification in the Land Cover Ecosystem Using ZY1-02D and Sentinel-1A

Abstract: Despite the successful application of multimodal deep learning (MDL) methods for land use/land cover (LULC) classification tasks, their fusion capacity has not yet been substantially examined for hyperspectral and synthetic aperture radar (SAR) data. Hyperspectral and SAR data have recently been widely used in land cover classification. However, the speckle noise of SAR and the heterogeneity with the imaging mechanism of hyperspectral data have hindered the application of MDL methods for integrating hyperspect… Show more

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“…Given the spectral heterogeneity within the same ecosystem and the spectral homogeneity among different types, relying solely on spectral bands poses challenges for complex ecosystem classification [77]. To ensure classification accuracy, this study comprehensively considered spectral bands, spectral indices, terrain, radar, and texture features.…”
Section: The Impacts Of Classification Features To Ecosystems Mappingmentioning
confidence: 99%
“…Given the spectral heterogeneity within the same ecosystem and the spectral homogeneity among different types, relying solely on spectral bands poses challenges for complex ecosystem classification [77]. To ensure classification accuracy, this study comprehensively considered spectral bands, spectral indices, terrain, radar, and texture features.…”
Section: The Impacts Of Classification Features To Ecosystems Mappingmentioning
confidence: 99%