Spectral Feature
Spectral features, encompassing the information contained within the spectrum of a signal or image, are central to various scientific fields, with primary objectives focused on efficient extraction, analysis, and utilization of this information for improved classification, reconstruction, and understanding of complex systems. Current research emphasizes the development and application of deep learning models, including convolutional neural networks (CNNs), transformers, and diffusion models, often combined with spectral analysis techniques like Fourier transforms and spectral embedding, to address challenges in high-dimensional data and improve performance in tasks such as image fusion, object tracking, and material identification. The effective use of spectral features holds significant potential for advancing diverse applications, from remote sensing and medical imaging to material science and environmental monitoring, by enabling more accurate and efficient data analysis.
Papers
Machine learning for exoplanet detection in high-contrast spectroscopy Combining cross correlation maps and deep learning on medium-resolution integral-field spectra
Rakesh Nath-Ranga, Olivier Absil, Valentin Christiaens, Emily O. Garvin
Comparative Analysis of Hyperspectral Image Reconstruction Using Deep Learning for Agricultural and Biological Applications
Md. Toukir Ahmed, Arthur Villordon, Mohammed Kamruzzaman
SGDFormer: One-stage Transformer-based Architecture for Cross-Spectral Stereo Image Guided Denoising
Runmin Zhang, Zhu Yu, Zehua Sheng, Jiacheng Ying, Si-Yuan Cao, Shu-Jie Chen, Bailin Yang, Junwei Li, Hui-Liang Shen
HSIMamba: Hyperpsectral Imaging Efficient Feature Learning with Bidirectional State Space for Classification
Judy X Yang, Jun Zhou, Jing Wang, Hui Tian, Alan Wee Chung Liew