Real-World Blur Dataset for Learning and Benchmarking Deblurring Algorithms

ECCV 2020 Jaesung RimHaeyun LeeJucheol WonSunghyun Cho

Numerous learning-based approaches to single image deblurring for camera and object motion blurs have recently been proposed. To generalize such approaches to real-world blurs, large datasets of real blurred images and their ground truth sharp images are essential... (read more)

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