Hyperspectral Image Reconstruction
Hyperspectral image reconstruction aims to recover high-quality, full spectral information from incomplete or compressed measurements, often acquired using cost-effective snapshot imaging systems. Current research heavily utilizes deep learning, employing architectures like transformers and convolutional neural networks (CNNs), often within unfolding frameworks that incorporate adaptive step sizes and attention mechanisms to leverage spatial and spectral correlations. These advancements are crucial for expanding the applications of hyperspectral imaging across diverse fields, including medical imaging, agriculture, and remote sensing, by making the technology more accessible and efficient.
Papers
Hyperspectral Image Reconstruction for Predicting Chick Embryo Mortality Towards Advancing Egg and Hatchery Industry
Md. Toukir Ahmed, Md Wadud Ahmed, Ocean Monjur, Jason Lee Emmert, Girish Chowdhary, Mohammed Kamruzzaman
Comparative Analysis of Hyperspectral Image Reconstruction Using Deep Learning for Agricultural and Biological Applications
Md. Toukir Ahmed, Arthur Villordon, Mohammed Kamruzzaman