Department of Information and Communication Technologies, Universitat Pompeu Fabra, Barcelona, Spain; Crisalix S.A., Lausanne, Switzerland.
Crisalix S.A., Lausanne, Switzerland.
Med Image Anal. 2018 Jul;47:164-179. doi: 10.1016/j.media.2018.04.007. Epub 2018 May 2.
The use of 3D imaging has increased as a practical and useful tool for plastic and aesthetic surgery planning. Specifically, the possibility of representing the patient breast anatomy in a 3D shape and simulate aesthetic or plastic procedures is a great tool for communication between surgeon and patient during surgery planning. For the purpose of obtaining the specific 3D model of the breast of a patient, model-based reconstruction methods can be used. In particular, 3D morphable models (3DMM) are a robust and widely used method to perform 3D reconstruction. However, if additional prior information (i.e., known landmarks) is combined with the 3DMM statistical model, shape constraints can be imposed to improve the 3DMM fitting accuracy. In this paper, we present a framework to fit a 3DMM of the breast to two possible inputs: 2D photos and 3D point clouds (scans). Our method consists in a Weighted Regularized (WR) projection into the shape space. The contribution of each point in the 3DMM shape is weighted allowing to assign more relevance to those points that we want to impose as constraints. Our method is applied at multiple stages of the 3D reconstruction process. Firstly, it can be used to obtain a 3DMM initialization from a sparse set of 3D points. Additionally, we embed our method in the 3DMM fitting process in which more reliable or already known 3D points or regions of points, can be weighted in order to preserve their shape information. The proposed method has been tested in two different input settings: scans and 2D pictures assessing both reconstruction frameworks with very positive results.
3D 成像已被广泛应用于整形和美容手术规划,成为一种实用且有效的工具。特别是,能够以 3D 形状呈现患者乳房解剖结构并模拟美容或整形手术的可能性,这是医生与患者在手术规划期间进行沟通的重要工具。为了获得患者乳房的特定 3D 模型,可以使用基于模型的重建方法。具体来说,3D 可变形模型(3DMM)是执行 3D 重建的强大且广泛使用的方法。然而,如果将额外的先验信息(即已知的地标)与 3DMM 统计模型相结合,则可以施加形状约束以提高 3DMM 拟合精度。在本文中,我们提出了一种将 3DMM 拟合到两个可能输入的框架:2D 照片和 3D 点云(扫描)。我们的方法包括加权正则(WR)投影到形状空间中。3DMM 形状中的每个点的贡献都被加权,从而可以为我们希望施加为约束的那些点赋予更高的相关性。我们的方法应用于 3D 重建过程的多个阶段。首先,它可以用于从稀疏的 3D 点集中获得 3DMM 初始化。此外,我们将我们的方法嵌入到 3DMM 拟合过程中,可以为更可靠或已知的 3D 点或点区域加权,以保留其形状信息。该方法已在两种不同的输入设置中进行了测试:扫描和 2D 图片,这两种框架都取得了非常积极的结果。