High Resolution Satellite
High-resolution satellite imagery is revolutionizing Earth observation, enabling detailed analysis across diverse applications from disaster response to agricultural monitoring. Current research emphasizes developing and adapting deep learning models, particularly convolutional neural networks (CNNs) and transformer-based architectures like U-Net and its variants, for tasks such as object detection, segmentation, and super-resolution. These advancements are significantly impacting various fields, improving the accuracy and efficiency of tasks ranging from building damage assessment and flood mapping to precision agriculture and environmental monitoring. The development of large, publicly available datasets is also a key focus, facilitating model training and benchmarking across different satellite sensors and geographic locations.
Papers
Reverse Refinement Network for Narrow Rural Road Detection in High-Resolution Satellite Imagery
Ningjing Wang, Xinyu Wang, Yang Pan, Wanqiang Yao, Yanfei Zhong
Developing Gridded Emission Inventory from High-Resolution Satellite Object Detection for Improved Air Quality Forecasts
Shubham Ghosal, Manmeet Singh, Sachin Ghude, Harsh Kamath, Vaisakh SB, Subodh Wasekar, Anoop Mahajan, Hassan Dashtian, Zong-Liang Yang, Michael Young, Dev Niyogi
Edge-Cloud Collaborative Satellite Image Analysis for Efficient Man-Made Structure Recognition
Kaicheng Sheng, Junxiao Xue, Hui Zhang
Remote Sensing Image Segmentation Using Vision Mamba and Multi-Scale Multi-Frequency Feature Fusion
Yice Cao, Chenchen Liu, Zhenhua Wu, Wenxin Yao, Liu Xiong, Jie Chen, Zhixiang Huang