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Autori principali: Merugu, Ranjith, Suhail, Mohammad Sameer, Sarashetti, Akshay P, Reddem, Venkata Bharath Reddy, Bajpai, Pankaj Kumar, Unde, Amit Satish
Natura: Preprint
Pubblicazione: 2025
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Accesso online:https://arxiv.org/abs/2505.16434
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author Merugu, Ranjith
Suhail, Mohammad Sameer
Sarashetti, Akshay P
Reddem, Venkata Bharath Reddy
Bajpai, Pankaj Kumar
Unde, Amit Satish
author_facet Merugu, Ranjith
Suhail, Mohammad Sameer
Sarashetti, Akshay P
Reddem, Venkata Bharath Reddy
Bajpai, Pankaj Kumar
Unde, Amit Satish
contents Recent advancements in video restoration have focused on recovering high-quality video frames from low-quality inputs. Compared with static images, the performance of video restoration significantly depends on efficient exploitation of temporal correlations among successive video frames. The numerous techniques make use of temporal information via flow-based strategies or recurrent architectures. However, these methods often encounter difficulties in preserving temporal consistency as they utilize degraded input video frames. To resolve this issue, we propose a novel video restoration framework named Joint Flow and Feature Refinement using Attention (JFFRA). The proposed JFFRA is based on key philosophy of iteratively enhancing data through the synergistic collaboration of flow (alignment) and restoration. By leveraging previously enhanced features to refine flow and vice versa, JFFRA enables efficient feature enhancement using temporal information. This interplay between flow and restoration is executed at multiple scales, reducing the dependence on precise flow estimation. Moreover, we incorporate an occlusion-aware temporal loss function to enhance the network's capability in eliminating flickering artifacts. Comprehensive experiments validate the versatility of JFFRA across various restoration tasks such as denoising, deblurring, and super-resolution. Our method demonstrates a remarkable performance improvement of up to 1.62 dB compared to state-of-the-art approaches.
format Preprint
id arxiv_https___arxiv_org_abs_2505_16434
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Joint Flow And Feature Refinement Using Attention For Video Restoration
Merugu, Ranjith
Suhail, Mohammad Sameer
Sarashetti, Akshay P
Reddem, Venkata Bharath Reddy
Bajpai, Pankaj Kumar
Unde, Amit Satish
Computer Vision and Pattern Recognition
Multimedia
Recent advancements in video restoration have focused on recovering high-quality video frames from low-quality inputs. Compared with static images, the performance of video restoration significantly depends on efficient exploitation of temporal correlations among successive video frames. The numerous techniques make use of temporal information via flow-based strategies or recurrent architectures. However, these methods often encounter difficulties in preserving temporal consistency as they utilize degraded input video frames. To resolve this issue, we propose a novel video restoration framework named Joint Flow and Feature Refinement using Attention (JFFRA). The proposed JFFRA is based on key philosophy of iteratively enhancing data through the synergistic collaboration of flow (alignment) and restoration. By leveraging previously enhanced features to refine flow and vice versa, JFFRA enables efficient feature enhancement using temporal information. This interplay between flow and restoration is executed at multiple scales, reducing the dependence on precise flow estimation. Moreover, we incorporate an occlusion-aware temporal loss function to enhance the network's capability in eliminating flickering artifacts. Comprehensive experiments validate the versatility of JFFRA across various restoration tasks such as denoising, deblurring, and super-resolution. Our method demonstrates a remarkable performance improvement of up to 1.62 dB compared to state-of-the-art approaches.
title Joint Flow And Feature Refinement Using Attention For Video Restoration
topic Computer Vision and Pattern Recognition
Multimedia
url https://arxiv.org/abs/2505.16434