High-Quality Correspondence and Segmentation Estimation for Dual-Lens Smart-Phone Portraits

2017 IEEE International Conference on Computer Vision (ICCV)(2017)

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摘要
Estimating correspondence between two images and extracting the foreground object are two challenges in computer vision. With dual-lens smart phones, such as iPhone 7Plus and Huawei P9, coming into the market, two images of slightly different views provide us new information to unify the two topics. We propose a joint method to tackle them simultaneously via a joint fully connected conditional random field (CRF) framework. The regional correspondence is used to handle textureless regions in matching and make our CRF system computationally efficient. Our method is evaluated over 2,000 new image pairs, and produces promising results on challenging portrait images.
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关键词
segmentation estimation,dual-lens smart-phone portraits,estimating correspondence,foreground object,computer vision,dual-lens smart phones,Huawei P9,conditional random field framework,regional correspondence,textureless regions,2 image pairs,high-quality correspondence,P9
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