Hyperspectral Image Classification using PCA Dimensionality Reduction and 3D CNN Deep learning
Keywords:
Hyperspectral image classification, 3D CNN, PCA, deep learning, spectral spatial integration, remote sensingAbstract
Hyperspectral image classification is a crucial task in remote sensing, enabling the detailed analysis and identification of materials on the Earth's surface. The primary objective of this research is to address the limitations of existing classification methods by introducing a novel deep learning-based approach that efficiently handles the high dimensionality and complexity of hyperspectral data.
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