2023
DOI: 10.3390/rs15133270
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Improving Feature Learning in Remote Sensing Images Using an Integrated Deep Multi-Scale 3D/2D Convolutional Network

Abstract: Developing complex hyperspectral image (HSI) sensors that capture high-resolution spatial information and voluminous (hundreds) spectral bands of the earth’s surface has made HSI pixel-wise classification a reality. The 3D-CNN has become the preferred HSI pixel-wise classification approach because of its ability to extract discriminative spectral and spatial information while maintaining data integrity. However, HSI datasets are characterized by high nonlinearity, voluminous spectral features, and limited trai… Show more

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“…However, the majority of studies focusing on hyperspectral image classification have predominantly employed CNN and RNN approaches [6][7][8]. CNN-based methods primarily emphasize local features within the hyperspectral images themselves, overlooking the distinctive spectral features unique to hyperspectral data [9].…”
Section: Introductionmentioning
confidence: 99%
“…However, the majority of studies focusing on hyperspectral image classification have predominantly employed CNN and RNN approaches [6][7][8]. CNN-based methods primarily emphasize local features within the hyperspectral images themselves, overlooking the distinctive spectral features unique to hyperspectral data [9].…”
Section: Introductionmentioning
confidence: 99%