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
Siamese Meets Diffusion Network: SMDNet for Enhanced Change Detection in High-Resolution RS Imagery
Jia Jia, Geunho Lee, Zhibo Wang, Lyu Zhi, Yuchu He
Remote Sensing ChatGPT: Solving Remote Sensing Tasks with ChatGPT and Visual Models
Haonan Guo, Xin Su, Chen Wu, Bo Du, Liangpei Zhang, Deren Li
Learning to detect cloud and snow in remote sensing images from noisy labels
Zili Liu, Hao Chen, Wenyuan Li, Keyan Chen, Zipeng Qi, Chenyang Liu, Zhengxia Zou, Zhenwei Shi
Generic Knowledge Boosted Pre-training For Remote Sensing Images
Ziyue Huang, Mingming Zhang, Yuan Gong, Qingjie Liu, Yunhong Wang
BD-MSA: Body decouple VHR Remote Sensing Image Change Detection method guided by multi-scale feature information aggregation
Yonghui Tan, Xiaolong Li, Yishu Chen, Jinquan Ai
SkyScript: A Large and Semantically Diverse Vision-Language Dataset for Remote Sensing
Zhecheng Wang, Rajanie Prabha, Tianyuan Huang, Jiajun Wu, Ram Rajagopal
MetaSegNet: Metadata-collaborative Vision-Language Representation Learning for Semantic Segmentation of Remote Sensing Images
Libo Wang, Sijun Dong, Ying Chen, Xiaoliang Meng, Shenghui Fang, Songlin Fei