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
From Pixels to Prose: Advancing Multi-Modal Language Models for Remote Sensing
Xintian Sun, Benji Peng, Charles Zhang, Fei Jin, Qian Niu, Junyu Liu, Keyu Chen, Ming Li, Pohsun Feng, Ziqian Bi, Ming Liu, Yichao Zhang
Exploring Seasonal Variability in the Context of Neural Radiance Fields for 3D Reconstruction on Satellite Imagery
Liv Kåreborn, Erica Ingerstad, Amanda Berg, Justus Karlsson, Leif Haglund
Mapping Africa Settlements: High Resolution Urban and Rural Map by Deep Learning and Satellite Imagery
Mohammad Kakooei, James Bailie, Albin Söderberg, Albin Becevic, Adel Daoud
Towards more efficient agricultural practices via transformer-based crop type classification
E. Ulises Moya-Sánchez, Yazid S. Mikail, Daisy Nyang'anyi, Michael J. Smith, Isabella Smythe
Tree level change detection over Ahmedabad city using very high resolution satellite images and Deep Learning
Jai G Singla, Gautam Jaiswal
Scale-Aware Recognition in Satellite Images under Resource Constraint
Shreelekha Revankar, Cheng Perng Phoo, Utkarsh Mall, Bharath Hariharan, Kavita Bala
AllClear: A Comprehensive Dataset and Benchmark for Cloud Removal in Satellite Imagery
Hangyu Zhou, Chia-Hsiang Kao, Cheng Perng Phoo, Utkarsh Mall, Bharath Hariharan, Kavita Bala