Abstract

Cranio-maxillofacial surgery often alters the aesthetics of the face which can be a heavy burden for patients to decide whether or not to undergo surgery. Today, physicians can predict the post-operative face using surgery planning tools to support the patient's decision-making. While these planning tools allow a simulation of the post-operative face, the facial texture must usually be captured by another 3D texture scan and subsequently mapped on the simulated face. This approach often results in face predictions that do not appear realistic or lively looking and are therefore ill-suited to guide the patient's decision-making. Instead, we propose a method using a generative adversarial network to modify a facial image according to a 3D soft-tissue estimation of the post-operative face. To circumvent the lack of available data pairs between pre- and post-operative measurements we propose a semi-supervised training strategy using cycle losses that only requires paired open-source data of images and 3D surfaces of the face's shape. After training on "in-the-wild" images we show that our model can realistically manipulate local regions of a face in a 2D image based on a modified 3D shape. We then test our model on four clinical examples where we predict the post-operative face according to a 3D soft-tissue prediction of surgery outcome, which was simulated by a surgery planning tool. As a result, we aim to demonstrate the potential of our approach to predict realistic post-operative images of faces without the need of paired clinical data, physical models, or 3D texture scans.

Highlights

  • C RANIO-MAXILLOFACIAL surgery is a common treatment of temporomandibular disorders or skeletal malocclusion

  • We tested our model on all 2000 images of the AFLW2000 dataset using all four different modifications Smn od as input that were proposed in this study and are visualized in Fig. 2 (b): larger chin, smaller chin, larger nose, and smaller nose

  • A baseline CDF is provided as a dotted line in red which was calculated on the original baseline images I n using all 68 landmarks #[1-68]

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Summary

Introduction

C RANIO-MAXILLOFACIAL surgery is a common treatment of temporomandibular disorders or skeletal malocclusion. Physicians can predict the virtual post-operative face using surgery planning tools like IPS CaseDesigner® [1] or Dolphin 3D® [2] These surgery planning tools typically require a tomography scan of the patients face which includes both segmented soft-tissue and segmented bone structure. A 3D scan of the facial texture must be captured by a 3D camera system, wrapped on the virtual pre-operative face, and subsequently interpolated according to the predicted deformation of the soft-tissue [7] This procedure to predict the post-operative texture has multiple disadvantages: 1) The procedure requires a 3D texture scanner which might not be available at every clinical site. Patients can be only provided with a single-color prediction of the post-operative face

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