Satellite Imagery
Satellite imagery analysis leverages advanced computational techniques to extract valuable information from remotely sensed data, primarily focusing on Earth observation and monitoring. Current research emphasizes the application of deep learning, particularly convolutional neural networks (CNNs) like U-Nets and YOLO, and transformer-based architectures, for tasks such as object detection, semantic segmentation, and change detection across various spatial and temporal scales. These advancements enable improved monitoring of environmental changes (e.g., deforestation, flooding), infrastructure assessment (e.g., building damage, road networks), and resource management (e.g., agriculture, aquaculture), impacting diverse fields from environmental science to humanitarian aid.
Papers
Progressive Domain Adaptation with Contrastive Learning for Object Detection in the Satellite Imagery
Debojyoti Biswas, Jelena Tešić
The Outcome of the 2022 Landslide4Sense Competition: Advanced Landslide Detection from Multi-Source Satellite Imagery
Omid Ghorbanzadeh, Yonghao Xu, Hengwei Zhao, Junjue Wang, Yanfei Zhong, Dong Zhao, Qi Zang, Shuang Wang, Fahong Zhang, Yilei Shi, Xiao Xiang Zhu, Lin Bai, Weile Li, Weihang Peng, Pedram Ghamisi
Splicing Detection and Localization In Satellite Imagery Using Conditional GANs
Emily R. Bartusiak, Sri Kalyan Yarlagadda, David Güera, Paolo Bestagini, Stefano Tubaro, Fengqing M. Zhu, Edward J. Delp
Understanding Urban Water Consumption using Remotely Sensed Data
Shaswat Mohanty, Anirudh Vijay, Shailesh Deshpande