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Competition

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MIPI 2025 Challenges

Developing and integrating advanced image sensors with novel algorithms in camera systems is prevalent with the increasing demand for computational photography and imaging on mobile platforms. However, the lack of high-quality data for research and the rare opportunity for in-depth exchange of views from industry and academia constrain the development of Mobile Intelligent Photography and Imaging (MIPI).

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AIM 2025 Challenges

Image manipulation is a key computer vision tasks, aiming at the restoration of degraded image content, the filling in of missing information, or the needed transformation and/or manipulation to achieve a desired target (with respect to perceptual quality, contents, or performance of apps working on such images).

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NTIRE 2026 Challenges

Image restoration, enhancement and manipulation are key computer vision tasks, aiming at the restoration of degraded image content, the filling in of missing information, or the needed transformation and/or manipulation to achieve a desired target (with respect to perceptual quality, contents, or performance of apps working on such images). Recent years have witnessed an increased interest from the vision and graphics communities in these fundamental topics of research.

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LoViF 2026 挑战赛

Low-level vision is undergoing a paradigm shift. Traditional restoration methods are being augmented and redefined by Generative AI, Preference Optimization, and Agentic Systems. The LoViF workshop aims to explore these frontiers, focusing on how generative foundation models can provide superior priors, how human feedback can refine visual quality, and how intelligent agents can autonomously handle complex restoration tasks.

Journal

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Pattern Recognition | Adaptive and Scalable Vision Models in Dynamic and Resource-Constrained Environments

In today’s rapidly evolving world, vision models are playing an increasingly crucial role in a variety of applications, including robotics, autonomous driving, healthcare, industrial automation, and environmental monitoring. However, these models often face challenges in dynamic, complex, and resource-constrained environments where data is noisy, incomplete, or continuously evolving.

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GIScience & Remote Sensing | Remote Sensing in Cloudy and Rainy Environments: Challenges, Advances, and Applications

Cloudy and rainy environments are common in tropical, subtropical, and other regions frequently affected by cloud cover and rainfall. These challenging conditions pose significant obstacles to remote sensing data acquisition, processing, and applications, while also motivating innovation in methodologies and technologies.

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IEEE JSTARS | Noise-Aware Remote Sensing: Modeling, Mitigation and Utilization

Recent interdisciplinary research reveals noise isn’t just a pollutant to remove—under control, it acts as a stimulus/explicit prior to boost model performance (refine decision boundaries, enhance privacy/robustness, support uncertainty quantification). However, existing studies lack a systematic "mitigation-stimulation-exploitation" framework and theoretical basis. This special issue solicits original research on noise-aware remote sensing to share advances and drive its development.

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IEEE JSTARS | Advances in Multimodal Transfer Learning for Remote Sensing: Theories, Methods, and Applications

Remote sensing is witnessing an unprecedented data revolution, marked by the explosive growth of heterogeneous Earth Observation (EO) data from diverse sensors—optical, SAR, LiDAR, hyperspectral, and thermal—across multiple resolutions.

Workshop

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