Learning-based face reconstruction and editing
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Date
2020-09-29Author
Kim, Hyeongwoo
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Photo-realistic face editing – an important basis for a wide range of applications in movie and game productions, and applications for mobile devices – is based on computationally expensive algorithms that often require many tedious time-consuming manual steps. This thesis advances state-of-the-art face performance capture and editing pipelines by proposing machine learning-based algorithms for high-quality inverse face rendering in real time and highly realistic neural face rendering, and a video-based refocusing method for faces and general videos. In particular, the proposed contributions address fundamental open challenges towards real-time and highly realistic face editing. The first contribution addresses face reconstruction and introduces a deep convolutional inverse rendering framework that jointly estimates all facial rendering parameters from a single image in real time. The proposed method is based on a novel boosting process that iteratively updates the synthetic training data to better reflect the distribution of real-world images. Second, the thesis introduces a method for face video editing at previously unseen quality. It is based on a generative neural network with a novel space-time architecture, which enables photo-realistic re-animation of portrait videos using an input video. It is the first method to transfer the full 3D head position, head rotation, face expression, eye gaze and eye blinking from a source actor to a portrait video of a target actor. Third, the thesis contributes a new refocusing approach for faces and general videos in postprocessing. The proposed algorithm is based on a new depth-from-defocus algorithm that computes space-time-coherent depth maps, deblurred all-in-focus video and the focus distance for each frame. The high-quality results shown with various applications and challenging scenarios demonstrate the contributions presented in the thesis, and also show potential for machine learning-driven algorithms to solve various open problems in computer graphics.