Synthetic Aperture Radar
Synthetic Aperture Radar (SAR) uses radio waves to create high-resolution images, regardless of weather or lighting conditions, making it invaluable for remote sensing and various applications. Current research focuses on improving SAR image quality through advanced speckle filtering techniques (often employing deep learning models like convolutional neural networks and diffusion models), enhancing target recognition (using architectures such as Vision Transformers and Sparse R-CNN) by mitigating clutter and improving domain generalization between synthetic and real data, and developing more efficient and robust algorithms for object detection and image segmentation. These advancements are significantly impacting fields like environmental monitoring, disaster response, and military reconnaissance by enabling more accurate and reliable interpretation of SAR imagery.
Papers
DAM-Net: Global Flood Detection from SAR Imagery Using Differential Attention Metric-Based Vision Transformers
Tamer Saleh, Xingxing Weng, Shimaa Holail, Chen Hao, Gui-Song Xia
Multi-Modal Deep Learning for Multi-Temporal Urban Mapping With a Partly Missing Optical Modality
Sebastian Hafner, Yifang Ban
Sea Ice Extraction via Remote Sensed Imagery: Algorithms, Datasets, Applications and Challenges
Anzhu Yu, Wenjun Huang, Qing Xu, Qun Sun, Wenyue Guo, Song Ji, Bowei Wen, Chunping Qiu
Efficient CNN-based Super Resolution Algorithms for mmWave Mobile Radar Imaging
Christos Vasileiou, Josiah W. Smith, Shiva Thiagarajan, Matthew Nigh, Yiorgos Makris, Murat Torlak
A Vision Transformer Approach for Efficient Near-Field Irregular SAR Super-Resolution
Josiah Smith, Yusef Alimam, Geetika Vedula, Murat Torlak
Deep Learning-Based Multiband Signal Fusion for 3-D SAR Super-Resolution
Josiah Smith, Murat Torlak