Remote Sensing Image
Remote sensing image analysis focuses on extracting meaningful information from images captured by satellites and aerial platforms, primarily for Earth observation applications. Current research emphasizes improving the accuracy and efficiency of various tasks, including semantic segmentation, object detection (especially oriented objects), and change detection, often leveraging deep learning models like transformers and UNets, along with innovative techniques such as prompt learning and multimodal fusion. These advancements are crucial for a wide range of applications, from precision agriculture and urban planning to environmental monitoring and disaster response, enabling more accurate and timely insights from remotely sensed data.
Papers
Segmentation-guided Attention for Visual Question Answering from Remote Sensing Images
Lucrezia Tosato, Hichem Boussaid, Flora Weissgerber, Camille Kurtz, Laurent Wendling, Sylvain Lobry
Paving the way toward foundation models for irregular and unaligned Satellite Image Time Series
Iris Dumeur, Silvia Valero, Jordi Inglada
RS-GPT4V: A Unified Multimodal Instruction-Following Dataset for Remote Sensing Image Understanding
Linrui Xu, Ling Zhao, Wang Guo, Qiujun Li, Kewang Long, Kaiqi Zou, Yuhan Wang, Haifeng Li
VRSBench: A Versatile Vision-Language Benchmark Dataset for Remote Sensing Image Understanding
Xiang Li, Jian Ding, Mohamed Elhoseiny