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Main Authors: Xue, Clara, Yan, Zizheng, Shi, Zhenning, Yu, Yuhang, Zhuang, Jingyu, Zhang, Qi, Chen, Jinwei, Fan, Qingnan
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2604.12286
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author Xue, Clara
Yan, Zizheng
Shi, Zhenning
Yu, Yuhang
Zhuang, Jingyu
Zhang, Qi
Chen, Jinwei
Fan, Qingnan
author_facet Xue, Clara
Yan, Zizheng
Shi, Zhenning
Yu, Yuhang
Zhuang, Jingyu
Zhang, Qi
Chen, Jinwei
Fan, Qingnan
contents Live Photo captures both a high-quality key photo and a short video clip to preserve the precious dynamics around the captured moment. While users may choose alternative frames as the key photo to capture better expressions or timing, these frames often exhibit noticeable quality degradation, as the photo capture ISP pipeline delivers significantly higher image quality than the video pipeline. This quality gap highlights the need for dedicated restoration techniques to enhance the reselected key photo. To this end, we propose LiveMoments, a reference-guided image restoration framework tailored for the reselected key photo in Live Photos. Our method employs a two-branch neural network: a reference branch that extracts structural and textural information from the original high-quality key photo, and a main branch that restores the reselected frame using the guidance provided by the reference branch. Furthermore, we introduce a unified Motion Alignment module that incorporates motion guidance for spatial alignment at both the latent and image levels. Experiments on real and synthetic Live Photos demonstrate that LiveMoments significantly improves perceptual quality and fidelity over existing solutions, especially in scenes with fast motion or complex structures. Our code is available at https://github.com/OpenVeraTeam/LiveMoments.
format Preprint
id arxiv_https___arxiv_org_abs_2604_12286
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle LiveMoments: Reselected Key Photo Restoration in Live Photos via Reference-guided Diffusion
Xue, Clara
Yan, Zizheng
Shi, Zhenning
Yu, Yuhang
Zhuang, Jingyu
Zhang, Qi
Chen, Jinwei
Fan, Qingnan
Computer Vision and Pattern Recognition
Live Photo captures both a high-quality key photo and a short video clip to preserve the precious dynamics around the captured moment. While users may choose alternative frames as the key photo to capture better expressions or timing, these frames often exhibit noticeable quality degradation, as the photo capture ISP pipeline delivers significantly higher image quality than the video pipeline. This quality gap highlights the need for dedicated restoration techniques to enhance the reselected key photo. To this end, we propose LiveMoments, a reference-guided image restoration framework tailored for the reselected key photo in Live Photos. Our method employs a two-branch neural network: a reference branch that extracts structural and textural information from the original high-quality key photo, and a main branch that restores the reselected frame using the guidance provided by the reference branch. Furthermore, we introduce a unified Motion Alignment module that incorporates motion guidance for spatial alignment at both the latent and image levels. Experiments on real and synthetic Live Photos demonstrate that LiveMoments significantly improves perceptual quality and fidelity over existing solutions, especially in scenes with fast motion or complex structures. Our code is available at https://github.com/OpenVeraTeam/LiveMoments.
title LiveMoments: Reselected Key Photo Restoration in Live Photos via Reference-guided Diffusion
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2604.12286