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Papers/Multi-Field De-interlacing using Deformable Convolution Re...

Multi-Field De-interlacing using Deformable Convolution Residual Blocks and Self-Attention

Ronglei Ji, A. Murat Tekalp

2022-09-21Super-ResolutionVideo DeinterlacingVideo Restoration
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Abstract

Although deep learning has made significant impact on image/video restoration and super-resolution, learned deinterlacing has so far received less attention in academia or industry. This is despite deinterlacing is well-suited for supervised learning from synthetic data since the degradation model is known and fixed. In this paper, we propose a novel multi-field full frame-rate deinterlacing network, which adapts the state-of-the-art superresolution approaches to the deinterlacing task. Our model aligns features from adjacent fields to a reference field (to be deinterlaced) using both deformable convolution residual blocks and self attention. Our extensive experimental results demonstrate that the proposed method provides state-of-the-art deinterlacing results in terms of both numerical and perceptual performance. At the time of writing, our model ranks first in the Full FrameRate LeaderBoard at https://videoprocessing.ai/benchmarks/deinterlacer.html

Results

TaskDatasetMetricValueModel
VideoMSU Deinterlacer BenchmarkFPS on CPU0.1DfRes (SA)
VideoMSU Deinterlacer BenchmarkPSNR43.486DfRes (SA)
VideoMSU Deinterlacer BenchmarkSSIM0.972DfRes (SA)
VideoMSU Deinterlacer BenchmarkSubjective0.925DfRes (SA)
VideoMSU Deinterlacer BenchmarkVMAF95.96DfRes (SA)
VideoMSU Deinterlacer BenchmarkFPS on CPU0.4DfRes
VideoMSU Deinterlacer BenchmarkPSNR40.59DfRes
VideoMSU Deinterlacer BenchmarkSSIM0.971DfRes
VideoMSU Deinterlacer BenchmarkSubjective0.912DfRes
VideoMSU Deinterlacer BenchmarkVMAF95.2DfRes
VideoMSU Deinterlacer BenchmarkPSNR43.2DfRes (122000 G2e 3)
VideoMSU Deinterlacer BenchmarkSSIM0.972DfRes (122000 G2e 3)
VideoMSU Deinterlacer BenchmarkSubjective0.862DfRes (122000 G2e 3)
VideoMSU Deinterlacer BenchmarkVMAF95.68DfRes (122000 G2e 3)

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