Efficient Real-World Deblurring using Single Images: AIM 2025 Challenge Report
By: Daniel Feijoo , Paula Garrido-Mellado , Marcos V. Conde and more
Potential Business Impact:
Makes blurry photos clear with less computer power.
This paper reviews the AIM 2025 Efficient Real-World Deblurring using Single Images Challenge, which aims to advance in efficient real-blur restoration. The challenge is based on a new test set based on the well known RSBlur dataset. Pairs of blur and degraded images in this dataset are captured using a double-camera system. Participant were tasked with developing solutions to effectively deblur these type of images while fulfilling strict efficiency constraints: fewer than 5 million model parameters and a computational budget under 200 GMACs. A total of 71 participants registered, with 4 teams finally submitting valid solutions. The top-performing approach achieved a PSNR of 31.1298 dB, showcasing the potential of efficient methods in this domain. This paper provides a comprehensive overview of the challenge, compares the proposed solutions, and serves as a valuable reference for researchers in efficient real-world image deblurring.
Similar Papers
AIM 2025 Challenge on High FPS Motion Deblurring: Methods and Results
CV and Pattern Recognition
Cleans up blurry pictures from fast movement.
AIM 2025 Low-light RAW Video Denoising Challenge: Dataset, Methods and Results
CV and Pattern Recognition
Cleans up dark, grainy videos from phones.
Efficient Perceptual Image Super Resolution: AIM 2025 Study and Benchmark
CV and Pattern Recognition
Makes blurry pictures sharp, fast, and small.