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
Exploiting Neighborhood Structural Features for Change Detection
Mengmeng Wang, Zhiqiang Han, Peizhen Yang, Bai Zhu, Ming Hao, Jianwei Fan, Yuanxin Ye
Adjacent-Level Feature Cross-Fusion With 3-D CNN for Remote Sensing Image Change Detection
Yuanxin Ye, Mengmeng Wang, Liang Zhou, Guangyang Lei, Jianwei Fan, Yao Qin
Scene Change Detection Using Multiscale Cascade Residual Convolutional Neural Networks
Daniel F. S. Santos, Rafael G. Pires, Danilo Colombo, João P. Papa
Self-Pair: Synthesizing Changes from Single Source for Object Change Detection in Remote Sensing Imagery
Minseok Seo, Hakjin Lee, Yongjin Jeon, Junghoon Seo