Advances in Deep Learning Change Detection Based on High-Resolution Remote Sensing Imagery
A special issue of Remote Sensing (ISSN 2072-4292). This special issue belongs to the section "Remote Sensing Image Processing".
Deadline for manuscript submissions: 30 August 2025 | Viewed by 164
Special Issue Editors
Interests: high-resolution satellite imagery; change detection; intelligent interpretation
Special Issues, Collections and Topics in MDPI journals
Interests: multitemporal data analysis and processing; change detection; spectral signal processing; information fusion; multispectral/hyperspectral images processing; remote sensing applications
Special Issues, Collections and Topics in MDPI journals
Interests: change detection; data fusion; remote sensing foundation model
Interests: deep learning-based change detection; satellite remote sensing; remote sensing for geohazard identification
Special Issue Information
Dear Colleagues,
High-resolution remote sensing (RS) imagery change detection (CD) plays an important role in resources surveying, urban sprawl monitoring, environmental assessment, and rapid disaster response. With the development of remote sensing big data, high-performance computing resources and powerful network architectures (such as CNN, Transformer, Mamba, etc.), deep learning techniques have been widely introduced to address CD tasks, pushing the automation and intelligence of CD to an amazing level. However, how to effectively capture real changes while suppressing the interface of noise remains an ongoing challenge. In addition, large amounts of labeled data are often needed to train such CD networks, which is usually costly and time-consuming to acquire, especially for multi-temporal high-resolution RS images. In such a context, many label-efficient learning techniques have been proposed to tackle these issues, such as semi-supervised learning, weak-supervised learning, active learning, and self-supervised learning. Particularly, the emergence of remote sensing large foundation models (such as SatMAE, ScaleMAE, SkySense, etc.), zero-shot foundation models (such as CLIP, DINO, SAM, SAM2, etc.), and powerful generative models (such as Stable Diffusion, ControlNet, etc.) has opened up new opportunities to address CD tasks in a more robust way. Motivated by the rapid development of these amazing techniques, we are excited to invite you to submit a research paper to this Special Issue, entitled "Advances in Deep Learning Change Detection Based on High-Resolution Remote Sensing Imagery". The aim of this Special Issue is to highlight state-of-the-art research that addresses various issues of deep learning CD for high-resolution remote sensing imagery with the development of model architectures, label-efficient learning methods, and large foundation models, among others. In addition, we also aim to highlight research work focused on smart deep learning CD applications in various areas, including geohazard identification, natural resources investigation, environmental monitoring, and rapid disaster response.
Topics of interest include, but are not limited to, the following:
- High-accuracy change detection techniques for high-resolution remote sensing imagery;
- Semi-supervised change detection techniques for high-resolution remote sensing imagery;
- Weak-supervised change detection techniques for high-resolution remote sensing imagery;
- Active learning techniques for high-resolution remote sensing imagery change detection;
- Self-supervised change detection techniques for high-resolution remote sensing imagery;
- Foundation model-assisted change detection techniques for high-resolution remote sensing imagery;
- Diffusion model-assisted change detection techniques for high-resolution remote sensing imagery;
- High-quality change sample generation using diffusion models;
- Domain adaption change detection techniques for high-resolution remote sensing imagery;
- Zero-shot change detection techniques for high-resolution remote sensing imagery;
- Open-vocabulary change detection techniques for high-resolution remote sensing imagery.
Dr. Daifeng Peng
Dr. Sicong Liu
Dr. Yuxing Chen
Dr. Zhi Zheng
Guest Editors
Manuscript Submission Information
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Keywords
- high-resolution remote sensing imagery
- change detection
- deep learning
- foundation model
- vision-language model
- label-efficient learning
- domain adaptation
- zero-shot learning
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