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Papers/Deep Flow-Guided Video Inpainting

Deep Flow-Guided Video Inpainting

Rui Xu, Xiaoxiao Li, Bolei Zhou, Chen Change Loy

2019-05-08CVPR 2019 6Optical Flow EstimationOne-shot visual object segmentationVideo Inpainting
PaperPDFCode(official)Code

Abstract

Video inpainting, which aims at filling in missing regions of a video, remains challenging due to the difficulty of preserving the precise spatial and temporal coherence of video contents. In this work we propose a novel flow-guided video inpainting approach. Rather than filling in the RGB pixels of each frame directly, we consider video inpainting as a pixel propagation problem. We first synthesize a spatially and temporally coherent optical flow field across video frames using a newly designed Deep Flow Completion network. Then the synthesized flow field is used to guide the propagation of pixels to fill up the missing regions in the video. Specifically, the Deep Flow Completion network follows a coarse-to-fine refinement to complete the flow fields, while their quality is further improved by hard flow example mining. Following the guide of the completed flow, the missing video regions can be filled up precisely. Our method is evaluated on DAVIS and YouTube-VOS datasets qualitatively and quantitatively, achieving the state-of-the-art performance in terms of inpainting quality and speed.

Results

TaskDatasetMetricValueModel
3DDAVISEwarp0.1608DFVI
3DDAVISPSNR28.81DFVI
3DDAVISSSIM0.9404DFVI
3DDAVISVFID0.187DFVI
3DYouTube-VOS 2018Ewarp0.1509DFVI
3DYouTube-VOS 2018PSNR29.16DFVI
3DYouTube-VOS 2018SSIM0.9429DFVI
3DYouTube-VOS 2018VFID0.066DFVI
Video InpaintingDAVISEwarp0.1608DFVI
Video InpaintingDAVISPSNR28.81DFVI
Video InpaintingDAVISSSIM0.9404DFVI
Video InpaintingDAVISVFID0.187DFVI
Video InpaintingYouTube-VOS 2018Ewarp0.1509DFVI
Video InpaintingYouTube-VOS 2018PSNR29.16DFVI
Video InpaintingYouTube-VOS 2018SSIM0.9429DFVI
Video InpaintingYouTube-VOS 2018VFID0.066DFVI

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