Some key players:
Differentiators
Many national ID systems use commercial ABIS solutions; vendor-lock-in is a real concern (proprietary matching engines, templates, index structures).
Performance of open-source vs commercial: open-source may achieve good results but often lacks the full integration, tuning, scalability, security certifications of commercial ABIS. For your museum/consulting audience it’s worth noting that “commodity” algorithms exist but full ABIS system performance/integration is a different challenge.
Many top vendors now emphasise fairness-aware algorithm design, balanced datasets, demographic effect reporting. For example IDEMIA emphasises accuracy and fairness in their benchmarking commentary. ([IDEMIA][10])
Best practices for addressing bias:
| Modality | 1:N Accuracy (FNIR @ FPIR) | 1:1 Accuracy (FNMR @ FMR) | Cost Range (device capture) | Payload Size | Strengths | Limitations |
|---|---|---|---|---|---|---|
| Fingerprint | ~ 0.18% @ FPIR=0.1% * [ideal] | ≤ 2% @ FMR ≤1/10 000 * | ~$50-100 | ~ 0.3-1.5 KB per finger | High maturity, multi-finger fusion | Worn fingers, hygiene/contact issues, environment |
| Face | ~ 3% @ FPIR=0.1% * [ideal] | ~ 0.1% @ FMR ≤1/100 000 * | <$1 (smartphone camera) | ~ 15-150 KB | Cheap, remote auth, fast algorithmic advances | Demographic bias, pose/twins/lighting/PAs |
| Iris | ~ 0.67% @ FPIR=0.1% * [ideal] | ~ 0.57% @ FMR ≤1/100 000 * | ~$100-300 | ~ 0.5-2 KB per iris | High stability over time, very high accuracy | Cost, user discomfort/cultural, some capture issues |