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Papers/Copy-and-Paste Networks for Deep Video Inpainting

Copy-and-Paste Networks for Deep Video Inpainting

Sungho Lee, Seoung Wug Oh, DaeYeun Won, Seon Joo Kim

2019-08-30ICCV 2019 10Image InpaintingVideo InpaintingLane Detection
PaperPDFCode

Abstract

We present a novel deep learning based algorithm for video inpainting. Video inpainting is a process of completing corrupted or missing regions in videos. Video inpainting has additional challenges compared to image inpainting due to the extra temporal information as well as the need for maintaining the temporal coherency. We propose a novel DNN-based framework called the Copy-and-Paste Networks for video inpainting that takes advantage of additional information in other frames of the video. The network is trained to copy corresponding contents in reference frames and paste them to fill the holes in the target frame. Our network also includes an alignment network that computes affine matrices between frames for the alignment, enabling the network to take information from more distant frames for robustness. Our method produces visually pleasing and temporally coherent results while running faster than the state-of-the-art optimization-based method. In addition, we extend our framework for enhancing over/under exposed frames in videos. Using this enhancement technique, we were able to significantly improve the lane detection accuracy on road videos.

Results

TaskDatasetMetricValueModel
3DDAVISEwarp0.1533CAP
3DDAVISPSNR30.28CAP
3DDAVISSSIM0.9521CAP
3DDAVISVFID0.182CAP
3DYouTube-VOS 2018Ewarp0.147CAP
3DYouTube-VOS 2018PSNR31.58CAP
3DYouTube-VOS 2018SSIM0.9607CAP
3DYouTube-VOS 2018VFID0.071CAP
Video InpaintingDAVISEwarp0.1533CAP
Video InpaintingDAVISPSNR30.28CAP
Video InpaintingDAVISSSIM0.9521CAP
Video InpaintingDAVISVFID0.182CAP
Video InpaintingYouTube-VOS 2018Ewarp0.147CAP
Video InpaintingYouTube-VOS 2018PSNR31.58CAP
Video InpaintingYouTube-VOS 2018SSIM0.9607CAP
Video InpaintingYouTube-VOS 2018VFID0.071CAP

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