Hyperspectral Image
Hyperspectral imaging (HSI) captures detailed spectral information across numerous bands, enabling precise material identification and scene analysis beyond the capabilities of traditional RGB or multispectral imaging. Current research heavily focuses on improving HSI classification and reconstruction using advanced deep learning architectures, such as transformers and state-space models (SSMs), often incorporating spatial context and addressing challenges like computational efficiency and data scarcity through techniques like self-supervised learning and test-time training. These advancements have significant implications for diverse fields, including remote sensing, precision agriculture, medical imaging, and environmental monitoring, offering enhanced capabilities for material identification, object detection, and scene understanding.
Papers
SpACNN-LDVAE: Spatial Attention Convolutional Latent Dirichlet Variational Autoencoder for Hyperspectral Pixel Unmixing
Soham Chitnis, Kiran Mantripragada, Faisal Z. Qureshi
Towards Machine Learning-based Quantitative Hyperspectral Image Guidance for Brain Tumor Resection
David Black, Declan Byrne, Anna Walke, Sidong Liu, Antonio Di leva, Sadahiro Kaneko, Walter Stummer, Septimiu Salcudean, Eric Suero Molina
Learning transformer-based heterogeneously salient graph representation for multimodal remote sensing image classification
Jiaqi Yang, Bo Du, Liangpei Zhang