Change Detection
Change detection, the process of identifying differences between images of the same scene taken at different times, aims to automatically analyze and quantify these changes. Current research focuses on improving accuracy and efficiency using various deep learning architectures, including convolutional neural networks (CNNs), transformers, and diffusion models, often incorporating techniques like multimodal learning and self-supervised training to address data limitations. These advancements have significant implications for diverse applications such as environmental monitoring, urban planning, disaster response, and autonomous driving, enabling more efficient and accurate analysis of dynamic processes.
Papers
Improving Zero-Shot Object-Level Change Detection by Incorporating Visual Correspondence
Hung Huy Nguyen, Pooyan Rahmanzadehgervi, Long Mail, Anh Totti Nguyen
Plug-and-Play DISep: Separating Dense Instances for Scene-to-Pixel Weakly-Supervised Change Detection in High-Resolution Remote Sensing Images
Zhenghui Zhao, Chen Wu, Lixiang Ru, Di Wang, Hongruixuan Chen, Cuiqun Chen
CDXFormer: Boosting Remote Sensing Change Detection with Extended Long Short-Term Memory
Zhenkai Wu, Xiaowen Ma, Rongrong Lian, Kai Zheng, Wei Zhang
AdaSemiCD: An Adaptive Semi-Supervised Change Detection Method Based on Pseudo-Label Evaluation
Ran Lingyan, Wen Dongcheng, Zhuo Tao, Zhang Shizhou, Zhang Xiuwei, Zhang Yanning
Quantum Information-Empowered Graph Neural Network for Hyperspectral Change Detection
Chia-Hsiang Lin, Tzu-Hsuan Lin, Jocelyn Chanussot