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5 months ago

Deep Video Inpainting

Dahun Kim; Sanghyun Woo; Joon-Young Lee; In So Kweon

Deep Video Inpainting

Abstract

Video inpainting aims to fill spatio-temporal holes with plausible content in a video. Despite tremendous progress of deep neural networks for image inpainting, it is challenging to extend these methods to the video domain due to the additional time dimension. In this work, we propose a novel deep network architecture for fast video inpainting. Built upon an image-based encoder-decoder model, our framework is designed to collect and refine information from neighbor frames and synthesize still-unknown regions. At the same time, the output is enforced to be temporally consistent by a recurrent feedback and a temporal memory module. Compared with the state-of-the-art image inpainting algorithm, our method produces videos that are much more semantically correct and temporally smooth. In contrast to the prior video completion method which relies on time-consuming optimization, our method runs in near real-time while generating competitive video results. Finally, we applied our framework to video retargeting task, and obtain visually pleasing results.

Code Repositories

mcahny/Deep-Video-Inpainting
Official
pytorch
Mentioned in GitHub
89viper/Python-Deep_Video_Inpainting
pytorch
Mentioned in GitHub

Benchmarks

BenchmarkMethodologyMetrics
video-inpainting-on-davisVINet
Ewarp: 0.1785
PSNR: 28.96
SSIM: 0.9411
VFID: 0.199
video-inpainting-on-youtube-vosVINet
Ewarp: 0.1490
PSNR: 29.20
SSIM: 0.9434
VFID: 0.072

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Deep Video Inpainting | Papers | HyperAI