Production-grade dlib face_recognition toolkit: piecewise confidence formula, enrollment quality diagnostics, and producer-side persistence for flicker suppression.
96
93%
Does it follow best practices?
Impact
100%
2.70xAverage score across 6 eval scenarios
Passed
No known issues
When working with face_recognition (dlib ResNet, 128-d embeddings):
face-recognition-confidence skill)d ≤ 0.30 → 1.0, d ≥ 0.60 → 0.0, linear between.1 - d / tolerance. Compresses strong matches into the mid-range.face-recognition-enrollment skill)<0.20 = overfit; >0.45 = loose cloud.enrolled.pkl. NEVER re-enroll from JPEG files in a latency-sensitive path (saves 8–10 s per startup).face-recognition-persistence skill)setuptools==75.8.0 for face_recognition_models / pkg_resources.