History-Augmented Contrastive Meta-Learning for Unsupervised Blind Super-Resolution of Planetary Remote Sensing Images

arXiv — cs.CVWednesday, November 26, 2025 at 5:00:00 AM
  • A new framework called History-Augmented Contrastive Blind Super-Resolution (HACBSR) has been introduced for unsupervised blind super-resolution of planetary remote sensing images, addressing the challenges posed by diverse and unknown image degradations. This framework operates without the need for ground-truth images or external kernel priors, utilizing a contrastive kernel sampling mechanism and history-augmented learning to enhance image quality.
  • The development of HACBSR is significant as it enables improved image resolution in planetary remote sensing, which is crucial for various applications in environmental monitoring, planetary exploration, and scientific research. By overcoming the limitations of existing methods that rely on supervised learning, HACBSR opens new avenues for analyzing remote sensing data.
  • This advancement reflects a broader trend in artificial intelligence and image processing, where unsupervised learning techniques are increasingly being adopted to tackle complex problems. The integration of historical models and contrastive learning methods highlights a shift towards more efficient and effective frameworks in image enhancement, paralleling developments in low-light image processing and noise reduction strategies.
— via World Pulse Now AI Editorial System

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