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arxiv: 1704.08812 · v1 · pith:NBJBUXZ4new · submitted 2017-04-28 · 💻 cs.CV

Automatic Real-time Background Cut for Portrait Videos

classification 💻 cs.CV
keywords backgroundportraitsegmentationvideoautomaticbuilddatasetfurther
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We in this paper solve the problem of high-quality automatic real-time background cut for 720p portrait videos. We first handle the background ambiguity issue in semantic segmentation by proposing a global background attenuation model. A spatial-temporal refinement network is developed to further refine the segmentation errors in each frame and ensure temporal coherence in the segmentation map. We form an end-to-end network for training and testing. Each module is designed considering efficiency and accuracy. We build a portrait dataset, which includes 8,000 images with high-quality labeled map for training and testing. To further improve the performance, we build a portrait video dataset with 50 sequences to fine-tune video segmentation. Our framework benefits many video processing applications.

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