Profile-Specific 3DMM Regression from a Single Lateral Face Image
Taiki Kanaya, Hideo Saito

TL;DR
This paper presents a new dataset and a baseline method for 3D face reconstruction from single lateral images, addressing challenges in profile view analysis for clinical applications.
Contribution
It introduces ProfileSynth, a synthetic dataset for extreme yaw face images, and a profile-specific FLAME regression baseline for improved 3D reconstruction.
Findings
ProfileSynth enables training on realistic lateral face images.
The baseline improves 3D reconstruction accuracy in profile views.
The approach supports non-invasive cephalometric analysis.
Abstract
Single-image 3D face reconstruction is a core problem in computer vision, with important clinical applications such as cephalometric landmark analysis in orthodontics. Traditionally, this analysis relies on lateral X-ray imaging; however, frequent X-ray exposure is impractical due to radiation concerns. While recent research has explored detecting landmarks from lateral RGB images as an alternative, existing methods typically rely on 2D features such as the eyes, mouth, ears, and boundary silhouettes, failing to fully exploit the underlying 3D facial geometry spanning the facial profile and jawline, which is essential for accurate diagnosis. Meanwhile, although 3D face reconstruction from frontal views has seen significant progress, most learning-based 3D morphable model (3DMM) regressors are developed and benchmarked on near-frontal images, where appearance cues are abundant. In…
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