Hyperspectral Datasets
Hyperspectral datasets, comprising images with hundreds of narrow spectral bands, are crucial for advanced remote sensing and material analysis, aiming to extract detailed spectral and spatial information for various applications. Current research focuses on developing robust model architectures, including convolutional neural networks (CNNs), transformers, and autoencoders, often coupled with self-supervised learning and data augmentation techniques to address challenges like limited training data and high dimensionality. These advancements are improving the accuracy and efficiency of tasks such as image classification, super-resolution, anomaly detection, and material segmentation, impacting fields ranging from precision agriculture to environmental monitoring and mineral exploration.
Papers
Hyperspectral Images Classification and Dimensionality Reduction using spectral interaction and SVM classifier
Asma Elmaizi, Elkebir Sarhrouni, Ahmed Hammouch, Nacir Chafik
Supervised classification methods applied to airborne hyperspectral images: Comparative study using mutual information
Hasna Nhaila, Asma Elmaizi, Elkebir Sarhrouni, Ahmed Hammouch