Unrestricted Facial Geometry Reconstruction Using Image-to-Image Translation

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

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摘要
It has been recently shown that neural networks can recover the geometric structure of a face from a single given image. A common denominator of most existing face geometry reconstruction methods is the restriction of the solution space to some low-dimensional subspace. While such a model significantly simplifies the reconstruction problem, it is inherently limited in its expressiveness. As an alternative, we propose an Image-to-Image translation network that jointly maps the input image to a depth image and a facial correspondence map. This explicit pixel-based mapping can then be utilized to provide high quality reconstructions of diverse faces under extreme expressions, using a purely geometric refinement process. In the spirit of recent approaches, the network is trained only with synthetic data, and is then evaluated on in-the-wild facial images. Both qualitative and quantitative analyses demonstrate the accuracy and the robustness of our approach.
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关键词
unrestricted facial geometry reconstruction,neural networks,geometric structure,common denominator,solution space,low-dimensional subspace,reconstruction problem,Image-to-Image translation network,depth image,facial correspondence map,explicit pixel-based mapping,high quality reconstructions,purely geometric refinement process,in-the-wild facial images,face geometry reconstruction methods
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