Abstract:Morphable models are essential for the statistical modeling of 3D faces. Previous works on morphable models mostly focus on largescale facial geometry but ignore facial details. This paper augments morphable models in representing facial details by learning a Structureaware Editable Morphable Model (SEMM). SEMM introduces a detail structure representation based on the distance field of wrinkle lines, jointly modeled with detail displacements to establish better correspondences and enable intuitive manipulation… Show more
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