Nguyen Duc-Phong, Nguyen Tan-Nhu, Dakpé Stéphanie, Ho Ba Tho Marie-Christine, Dao Tien-Tuan
Université de Technologie de Compiègne, CNRS, Biomechanics and Bioengineering, Centre de Recherche Royallieu, Compiègne, CEDEX, CS 60319-60203, France.
Department of Maxillo-Facial Surgery, CHU Amiens-Picardie, 80000 Amiens, France.
Bioengineering (Basel). 2022 Oct 27;9(11):619. doi: 10.3390/bioengineering9110619.
The 3D reconstruction of an accurate face model is essential for delivering reliable feedback for clinical decision support. Medical imaging and specific depth sensors are accurate but not suitable for an easy-to-use and portable tool. The recent development of deep learning (DL) models opens new challenges for 3D shape reconstruction from a single image. However, the 3D face shape reconstruction of facial palsy patients is still a challenge, and this has not been investigated. The contribution of the present study is to apply these state-of-the-art methods to reconstruct the 3D face shape models of facial palsy patients in natural and mimic postures from one single image. Three different methods (3D Basel Morphable model and two 3D Deep Pre-trained models) were applied to the dataset of two healthy subjects and two facial palsy patients. The reconstructed outcomes were compared to the 3D shapes reconstructed using Kinect-driven and MRI-based information. As a result, the best mean error of the reconstructed face according to the Kinect-driven reconstructed shape is 1.5±1.1 mm. The best error range is 1.9±1.4 mm when compared to the MRI-based shapes. Before using the procedure to reconstruct the 3D faces of patients with facial palsy or other facial disorders, several ideas for increasing the accuracy of the reconstruction can be discussed based on the results. This present study opens new avenues for the fast reconstruction of the 3D face shapes of facial palsy patients from a single image. As perspectives, the best DL method will be implemented into our computer-aided decision support system for facial disorders.
精确面部模型的三维重建对于提供可靠的反馈以支持临床决策至关重要。医学成像和特定深度传感器虽然精确,但并不适合作为易于使用的便携式工具。深度学习(DL)模型的最新发展为从单张图像进行三维形状重建带来了新的挑战。然而,面瘫患者的三维面部形状重建仍然是一个挑战,且尚未得到研究。本研究的贡献在于应用这些先进方法,从单张图像重建面瘫患者在自然和模仿姿势下的三维面部形状模型。将三种不同方法(三维巴塞尔可变形模型和两种三维深度预训练模型)应用于两名健康受试者和两名面瘫患者的数据集。将重建结果与使用基于Kinect驱动和基于MRI的信息重建的三维形状进行比较。结果,根据基于Kinect驱动重建形状,重建面部的最佳平均误差为1.5±1.1毫米。与基于MRI的形状相比,最佳误差范围为1.9±1.4毫米。在使用该程序重建面瘫或其他面部疾病患者的三维面部之前,可以根据结果讨论几种提高重建准确性的方法。本研究为从单张图像快速重建面瘫患者的三维面部形状开辟了新途径。展望未来,最佳的深度学习方法将被应用到我们针对面部疾病的计算机辅助决策支持系统中。