CVMay 7

SuperFace: Preference-Aligned Facial Expression Estimation Beyond Pseudo Supervision

arXiv:2605.0617920.7
Predicted impact top 37% in CV · last 90 daysOriginality Incremental advance
AI Analysis

For digital human animation, this work addresses the bottleneck of noisy pseudo labels by introducing preference-driven optimization, though the improvement is incremental.

SuperFace replaces pseudo-label supervision with human preference feedback to improve ARKit facial expression estimation, achieving more visually faithful animation than existing methods.

Accurate facial estimation is crucial for realistic digital human animation, and ARKit blendshape coefficients offer an interpretable representation by mapping facial motions to semantic animation controls. However, learning high-quality ARKit coefficient prediction remains limited by the absence of reliable ground-truth supervision. Existing methods typically rely on capture software such as Live Link Face to provide pseudo labels, which may contain noisy activations, biased coefficient magnitudes, and missing or inaccurate facial actions. Consequently, models trained with supervised learning tend to reproduce imperfect pseudo labels rather than optimize for perceptual expression fidelity. In this paper, we propose SuperFace, a preference-driven framework that moves ARKit facial expression estimation from pseudo-label imitation toward human-aligned perceptual optimization. Instead of treating software-estimated coefficients as fixed ground truth, SuperFace uses them only as an initialization and further improves coefficient prediction through human preference feedback on rendered facial expressions. By aligning the model with perceptual judgments rather than numerical pseudo labels, SuperFace enables more visually faithful and expressive facial animation. Experiments show that SuperFace improves expression fidelity over Live Link Face supervision, demonstrating the effectiveness of preference-driven optimization for semantic facial action prediction.

Foundations

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