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Autori principali: Ouyang, Hao, Wang, Qiuyu, Xiao, Yuxi, Bai, Qingyan, Zhang, Juntao, Zheng, Kecheng, Zhou, Xiaowei, Chen, Qifeng, Shen, Yujun
Natura: Preprint
Pubblicazione: 2023
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Accesso online:https://arxiv.org/abs/2308.07926
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author Ouyang, Hao
Wang, Qiuyu
Xiao, Yuxi
Bai, Qingyan
Zhang, Juntao
Zheng, Kecheng
Zhou, Xiaowei
Chen, Qifeng
Shen, Yujun
author_facet Ouyang, Hao
Wang, Qiuyu
Xiao, Yuxi
Bai, Qingyan
Zhang, Juntao
Zheng, Kecheng
Zhou, Xiaowei
Chen, Qifeng
Shen, Yujun
contents We present the content deformation field CoDeF as a new type of video representation, which consists of a canonical content field aggregating the static contents in the entire video and a temporal deformation field recording the transformations from the canonical image (i.e., rendered from the canonical content field) to each individual frame along the time axis. Given a target video, these two fields are jointly optimized to reconstruct it through a carefully tailored rendering pipeline. We advisedly introduce some regularizations into the optimization process, urging the canonical content field to inherit semantics (e.g., the object shape) from the video. With such a design, CoDeF naturally supports lifting image algorithms for video processing, in the sense that one can apply an image algorithm to the canonical image and effortlessly propagate the outcomes to the entire video with the aid of the temporal deformation field. We experimentally show that CoDeF is able to lift image-to-image translation to video-to-video translation and lift keypoint detection to keypoint tracking without any training. More importantly, thanks to our lifting strategy that deploys the algorithms on only one image, we achieve superior cross-frame consistency in processed videos compared to existing video-to-video translation approaches, and even manage to track non-rigid objects like water and smog. Project page can be found at https://qiuyu96.github.io/CoDeF/.
format Preprint
id arxiv_https___arxiv_org_abs_2308_07926
institution arXiv
publishDate 2023
record_format arxiv
spellingShingle CoDeF: Content Deformation Fields for Temporally Consistent Video Processing
Ouyang, Hao
Wang, Qiuyu
Xiao, Yuxi
Bai, Qingyan
Zhang, Juntao
Zheng, Kecheng
Zhou, Xiaowei
Chen, Qifeng
Shen, Yujun
Computer Vision and Pattern Recognition
We present the content deformation field CoDeF as a new type of video representation, which consists of a canonical content field aggregating the static contents in the entire video and a temporal deformation field recording the transformations from the canonical image (i.e., rendered from the canonical content field) to each individual frame along the time axis. Given a target video, these two fields are jointly optimized to reconstruct it through a carefully tailored rendering pipeline. We advisedly introduce some regularizations into the optimization process, urging the canonical content field to inherit semantics (e.g., the object shape) from the video. With such a design, CoDeF naturally supports lifting image algorithms for video processing, in the sense that one can apply an image algorithm to the canonical image and effortlessly propagate the outcomes to the entire video with the aid of the temporal deformation field. We experimentally show that CoDeF is able to lift image-to-image translation to video-to-video translation and lift keypoint detection to keypoint tracking without any training. More importantly, thanks to our lifting strategy that deploys the algorithms on only one image, we achieve superior cross-frame consistency in processed videos compared to existing video-to-video translation approaches, and even manage to track non-rigid objects like water and smog. Project page can be found at https://qiuyu96.github.io/CoDeF/.
title CoDeF: Content Deformation Fields for Temporally Consistent Video Processing
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2308.07926