首页> 外文期刊>Forensic science international >Craniofacial reconstruction using a combined statistical model of face shape and soft tissue depths: methodology and validation.
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Craniofacial reconstruction using a combined statistical model of face shape and soft tissue depths: methodology and validation.

机译:使用面部形状和软组织深度的组合统计模型进行颅面重建:方法学和验证。

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Forensic facial reconstruction aims at estimating the facial outlook associated with an unidentified skull specimen. Estimation is generally based on tabulated average values of soft tissue thicknesses measured at a sparse set of landmarks on the skull. Traditional 'plastic' methods apply modeling clay or plasticine on a cast of the skull, approximating the estimated tissue depths at the landmarks and interpolating in between. Current computerized techniques mimic this landmark interpolation procedure using a single static facial surface template. However, the resulting reconstruction is biased by the specific choice of the template and no face-specific regularization is used during the interpolation process. We reduce the template bias by using a flexible statistical model of a dense set of facial surface points, combined with an associated sparse set of skull-based landmarks. This statistical model is constructed from a facial database of (N = 118) individuals and limits the reconstructions to statistically plausible outlooks. The actual reconstruction is obtained by fitting the skull-based landmarks of the template model to the corresponding landmarks indicated on a digital copy of the skull to be reconstructed. The fitting process changes the face-specific statistical model parameters in a regularized way and interpolates the remaining landmark fit error using a minimal bending thin-plate spline (TPS)-based deformation. Furthermore, estimated properties of the skull specimen (BMI, age and gender, e.g.) can be incorporated as conditions on the reconstruction by removing property-related shape variation from the statistical model description before the fitting process. The proposed statistical method is validated, both in terms of accuracy and identification success rate, based on leave-one-out cross-validation tests applied on the facial database. Accuracy results are obtained by statistically analyzing the local 3D facial surface differences of the reconstructions and their corresponding ground truth. Identification success rate is obtained by comparing, based on correlation, Euclidean distance matrix (EDM) signatures of the reconstructed and the original 3D facial surfaces in the database. A subjective identification success rate is quantified based on face-pool tests. Finally a qualitative comparison is made between facial reconstructions of a real-case skull, based on two typical static face models and our statistical model, showing the shortcomings of current face models and the improved performance of the statistical model.
机译:法医面部重建旨在评估与身份不明的头骨标本相关的面部表情。估计通常基于在头骨上稀疏的一组界标处测得的软组织厚度的列表平均值。传统的“塑性”方法在头骨的铸模上应用粘土或橡皮泥建模,以近似估计路标处的组织深度并在两者之间进行插值。当前的计算机化技术使用单个静态面部表面模板来模拟该界标内插过程。但是,结果的重构会因模板的特定选择而有偏差,并且在插值过程中不会使用特定于面部的正则化。我们通过使用一组密集的面部表面点的灵活统计模型,并结合基于头骨的地标的稀疏集合,来减少模板偏差。此统计模型是根据(N = 118)个人的面部数据库构建的,并将重建限制在统计学上合理的前景上。通过将模板模型的基于头骨的地标拟合到要重建的头骨的数字副本上指示的相应地标,可以获得实际的重建。拟合过程以规则的方式更改特定于面部的统计模型参数,并使用基于最小弯曲薄板样条(TPS)的变形来内插剩余的界标拟合误差。此外,可以通过在拟合过程之前从统计模型描述中删除与属性相关的形状变化,来将头骨标本的估计属性(例如BMI,年龄和性别)作为重建条件并入。基于对面部数据库进行的留一法交叉验证测试,从准确性和识别成功率两方面对所提出的统计方法进行了验证。通过统计分析重建的局部3D面部表面差异及其对应的地面真实性,可以获得准确性结果。通过基于相关性比较数据库中重建的原始3D面部表面的欧几里德距离矩阵(EDM)签名,可以获得识别成功率。主观识别成功率是基于面部表情测试进行量化的。最后,基于两个典型的静态人脸模型和我们的统计模型,对真实案例头骨的人脸重建进行了定性比较,显示了当前人脸模型的缺点和统计模型的改进性能。

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