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{Chen Change Loy Xiaoou Tang Shizhan Zhu Cheng Li}

Abstract
We present a novel face alignment framework based on coarse-to-fine shape searching. Unlike the conventional cascaded regression approaches that start with an initial shape and refine the shape in a cascaded manner, our approach begins with a coarse search over a shape space that contains diverse shapes, and employs the coarse solution to constrain subsequent finer search of shapes. The unique stage-by-stage progressive and adaptive search i) prevents the final solution from being trapped in local optima due to poor initialisation, a common problem encountered by cascaded regression approaches; and ii) improves the robustness in coping with large pose variations. The framework demonstrates real-time performance and state-of-the-art results on various benchmarks including the challenging 300-W dataset.
Benchmarks
| Benchmark | Methodology | Metrics |
|---|---|---|
| face-alignment-on-aflw-19 | CFSS | NME_diag (%, Frontal): 2.68 NME_diag (%, Full): 3.92 |
| face-alignment-on-wflw | CFSS | AUC@10 (inter-ocular): 36.6 FR@10 (inter-ocular): 20.56 NME (inter-ocular): 9.07 |
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