A method for automatic forensic facial reconstruction based on dense statistics of soft tissue thickness
Thomas Gietzen, Robert Brylka, Jascha Achenbach, Katja zum, Hebel, Elmar Sch\"omer, Mario Botsch, Ulrich Schwanecke, Ralf, Schulze

TL;DR
This paper introduces an automated method for forensic facial reconstruction from skull remains, utilizing dense statistical models of soft tissue thickness derived from CT and optical scans to generate plausible head variants.
Contribution
It presents a novel automated approach combining volumetric skull and head models with dense FSTT statistics for probabilistic facial reconstruction.
Findings
FSTT values align with literature data
Reconstructed faces visually match CT scan skin surfaces
Method enables plausible head variants with PCA adjustment
Abstract
In this paper, we present a method for automated estimation of a human face given a skull remain. The proposed method is based on three statistical models. A volumetric (tetrahedral) skull model encoding the variations of different skulls, a surface head model encoding the head variations, and a dense statistic of facial soft tissue thickness (FSTT). All data are automatically derived from computed tomography (CT) head scans and optical face scans. In order to obtain a proper dense FSTT statistic, we register a skull model to each skull extracted from a CT scan and determine the FSTT value for each vertex of the skull model towards the associated extracted skin surface. The FSTT values at predefined landmarks from our statistic are well in agreement with data from the literature. To recover a face from a skull remain, we first fit our skull model to the given skull. Next, we generate…
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