Vggface2-hq 〈EXCLUSIVE ✭〉

If you need a deep dive into a specific aspect (e.g., creating your own HQ pipeline, training a recognition model, or comparing with other datasets), let me know.

| Model | Training Data | LFW (%) | AgeDB-30 (%) | CFP-FP (%) | |-------|---------------|---------|--------------|-------------| | ArcFace (R100) | VGGFace2 | 99.82 | 98.15 | 96.25 | | ArcFace (R100) | VGGFace2-HQ | 99.85 | 98.42 | 96.80 | | MobileFaceNet | VGGFace2 | 99.52 | 96.80 | 94.20 | | MobileFaceNet | VGGFace2-HQ | 99.60 | 97.10 | 94.90 | vggface2-hq

: +0.1–0.3% on clean benchmarks, more significant on blurred/noisy test sets. If you need a deep dive into a specific aspect (e

: Researchers with access to original VGGFace2 who need cleaner, aligned, high-res faces without collecting new data. creating your own HQ pipeline

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