Hyperspectral Image Classification
Hyperspectral image classification aims to automatically assign labels to each pixel in a hyperspectral image, identifying different materials or land cover types based on their unique spectral signatures. Current research heavily focuses on improving the accuracy and efficiency of classification using deep learning architectures, including convolutional neural networks (CNNs), transformers, and novel state-space models like Mamba, often incorporating spatial and spectral information in innovative ways. These advancements are crucial for various applications, such as precision agriculture, environmental monitoring, and medical imaging, enabling more accurate and timely analysis of complex datasets. Furthermore, significant effort is dedicated to addressing challenges like computational cost, limited training data, and uncertainty quantification in classification results.
Papers
A Comprehensive Survey for Hyperspectral Image Classification: The Evolution from Conventional to Transformers and Mamba Models
Muhammad Ahmad, Salvatore Distifano, Adil Mehmood Khan, Manuel Mazzara, Chenyu Li, Hao Li, Jagannath Aryal, Yao Ding, Gemine Vivone, Danfeng Hong
Pyramid Hierarchical Transformer for Hyperspectral Image Classification
Muhammad Ahmad, Muhammad Hassaan Farooq Butt, Manuel Mazzara, Salvatore Distifano
Importance of Disjoint Sampling in Conventional and Transformer Models for Hyperspectral Image Classification
Muhammad Ahmad, Manuel Mazzara, Salvatore Distifano
Attention based Dual-Branch Complex Feature Fusion Network for Hyperspectral Image Classification
Mohammed Q. Alkhatib, Mina Al-Saad, Nour Aburaed, M. Sami Zitouni, Hussain Al Ahmad
Multi-level Relation Learning for Cross-domain Few-shot Hyperspectral Image Classification
Chun Liu, Longwei Yang, Zheng Li, Wei Yang, Zhigang Han, Jianzhong Guo, Junyong Yu