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Papers/Real-time Deep Video Deinterlacing

Real-time Deep Video Deinterlacing

Haichao Zhu, Xueting Liu, Xiangyu Mao, Tien-Tsin Wong

2017-08-01Super-ResolutionVideo DeinterlacingTranslation
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Abstract

Interlacing is a widely used technique, for television broadcast and video recording, to double the perceived frame rate without increasing the bandwidth. But it presents annoying visual artifacts, such as flickering and silhouette "serration," during the playback. Existing state-of-the-art deinterlacing methods either ignore the temporal information to provide real-time performance but lower visual quality, or estimate the motion for better deinterlacing but with a trade-off of higher computational cost. In this paper, we present the first and novel deep convolutional neural networks (DCNNs) based method to deinterlace with high visual quality and real-time performance. Unlike existing models for super-resolution problems which relies on the translation-invariant assumption, our proposed DCNN model utilizes the temporal information from both the odd and even half frames to reconstruct only the missing scanlines, and retains the given odd and even scanlines for producing the full deinterlaced frames. By further introducing a layer-sharable architecture, our system can achieve real-time performance on a single GPU. Experiments shows that our method outperforms all existing methods, in terms of reconstruction accuracy and computational performance.

Results

TaskDatasetMetricValueModel
VideoMSU Deinterlacer BenchmarkFPS on CPU0.3Real-time Deep Video Deinterlacing
VideoMSU Deinterlacer BenchmarkPSNR38.374Real-time Deep Video Deinterlacing
VideoMSU Deinterlacer BenchmarkSSIM0.957Real-time Deep Video Deinterlacing
VideoMSU Deinterlacer BenchmarkSubjective0.543Real-time Deep Video Deinterlacing
VideoMSU Deinterlacer BenchmarkVMAF93.28Real-time Deep Video Deinterlacing

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