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Papers/Reference-based Video Super-Resolution Using Multi-Camera ...

Reference-based Video Super-Resolution Using Multi-Camera Video Triplets

Junyong Lee, Myeonghee Lee, Sunghyun Cho, Seungyong Lee

2022-03-28CVPR 2022 1Super-ResolutionVideo Super-ResolutionReference-based Video Super-Resolution
PaperPDFCode(official)

Abstract

We propose the first reference-based video super-resolution (RefVSR) approach that utilizes reference videos for high-fidelity results. We focus on RefVSR in a triple-camera setting, where we aim at super-resolving a low-resolution ultra-wide video utilizing wide-angle and telephoto videos. We introduce the first RefVSR network that recurrently aligns and propagates temporal reference features fused with features extracted from low-resolution frames. To facilitate the fusion and propagation of temporal reference features, we propose a propagative temporal fusion module. For learning and evaluation of our network, we present the first RefVSR dataset consisting of triplets of ultra-wide, wide-angle, and telephoto videos concurrently taken from triple cameras of a smartphone. We also propose a two-stage training strategy fully utilizing video triplets in the proposed dataset for real-world 4x video super-resolution. We extensively evaluate our method, and the result shows the state-of-the-art performance in 4x super-resolution.

Results

TaskDatasetMetricValueModel
Super-ResolutionRealMCVSRPSNR34.86RefVSR-IR-ℓ1
Super-ResolutionRealMCVSRPSNR34.74RefVSR-ℓ1
Super-ResolutionRealMCVSRPSNR33.88RefVSR-small-ℓ1
Super-ResolutionRealMCVSRPSNR33.8IconVSR-ℓch [chan2021basicvsr]
Super-ResolutionRealMCVSRPSNR33.66BasicVSR-ℓch [chan2021basicvsr]
Super-ResolutionRealMCVSRPSNR33.47EDVR-ℓch [wang2019edvr]
Super-ResolutionRealMCVSRPSNR33.26EDVR-M-ℓch [wang2019edvr]
Super-ResolutionRealMCVSRPSNR32.43DCSR-ℓ1 [wang2021DCSR]
Super-ResolutionRealMCVSRPSNR31.07RCAN-ℓ1 [zhang2018rcan]
Super-ResolutionRealMCVSRPSNR30.83TTSR-ℓ1 [yang2020TTSR]
3D Object Super-ResolutionRealMCVSRPSNR34.86RefVSR-IR-ℓ1
3D Object Super-ResolutionRealMCVSRPSNR34.74RefVSR-ℓ1
3D Object Super-ResolutionRealMCVSRPSNR33.88RefVSR-small-ℓ1
3D Object Super-ResolutionRealMCVSRPSNR33.8IconVSR-ℓch [chan2021basicvsr]
3D Object Super-ResolutionRealMCVSRPSNR33.66BasicVSR-ℓch [chan2021basicvsr]
3D Object Super-ResolutionRealMCVSRPSNR33.47EDVR-ℓch [wang2019edvr]
3D Object Super-ResolutionRealMCVSRPSNR33.26EDVR-M-ℓch [wang2019edvr]
3D Object Super-ResolutionRealMCVSRPSNR32.43DCSR-ℓ1 [wang2021DCSR]
3D Object Super-ResolutionRealMCVSRPSNR31.07RCAN-ℓ1 [zhang2018rcan]
3D Object Super-ResolutionRealMCVSRPSNR30.83TTSR-ℓ1 [yang2020TTSR]

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