Many modern online 3D applications and video games rely on parametric models of human faces for creating believable avatars. However, manually reproducing someone's facial likeness with a parametric model is difficult and time-consuming. Machine Learning solution for that task is highly desirable but is also challenging. The paper proposes a novel approach to the so-called Face-to-Parameters problem (F2P for short), aiming to reconstruct a parametric face from a single image. The proposed method utilizes synthetic data, domain decomposition, and domain adaptation to address multifaceted challenges in solving the F2P. The open-sourced codebase illustrates our key observations and provides means for quantitative evaluation. The presented approach proves practical in an industrial application; it improves accuracy and allows for more efficient models training. The techniques have the potential to extend to other types of parametric models.
翻译:许多现代在线3D应用程序和视频游戏依靠人类面孔的参数模型来创建可以令人相信的异形。 但是,人工复制某人面部相似的参数模型既困难又费时。 机器学习对于这项任务非常可取,但也具有挑战性。 本文提出了解决所谓的面对面问题的新颖方法(F2P简称),目的是从单一图像中重建一个参数。 拟议的方法利用合成数据、域分解和域适应来应对解决F2P的多方面挑战。 开放源代码库展示了我们的主要观察,提供了定量评估的手段。 所提出的方法在工业应用中证明是实用的; 它提高了准确性,并允许更有效的模型培训。 技术有可能推广到其他类型的参数模型。