Re-platforming Options:
Consider migrating to an interoperable and scalable framework (e.g., MOSIP) to ensure a sustainable long-term solution. Re-evalute business processes is recommended.
Operational Efficiency:
Optimize resource utilization, reduce the number of licenses, and adopt a scalable architecture to lower operating and maintenance costs.
Alternative Approaches:
Explore open-source solutions or integrate a Commercial-Off-The-Shelf (COTS) ABIS.
New Field Server
(largely compatible with
BIMS central)
keeps existing frontend
2. Biometric De-duplication Optimisation
Current Process Inefficiencies
The simultaneous matching of iris and fingerprint biometrics leads to unnecessary computational overhead and longer processing times
Sequential Matching Strategy
Implement a sequential approach—such as prioritizing iris matching—to streamline the workflow and reduce resource consumption without compromising accuracy.
3. System Testing and Performance Optimisation
Automated Testing Framework
The absence of a robust automated testing framework limits the ability to validate software updates and detect performance regressions.
Synthetic Data & Load Testing
Utilize synthetic data generation and load testing to simulate real-world conditions and verify system resilience under high operational loads.
Enhanced Logging and Audits
Improve logging capabilities and conduct regular system performance audits for continuous monitoring.
4. Opportunities for Face Matching Integration
Additional Biometric Modality
Deployment may require improvements in enrollment quality controls
Hybrid Verification Model:
Develop a model where face matching serves as a complementary verification method alongside fingerprint and iris matching.
Might allow new use cases
Quality and Testing
Requires more emprical field data
5. Data Merge Strategy
Current Merging Challenges: The existing processes for merging biometric data across multiple encounters can lead to inconsistencies and reduced match efficacy.
Proposed Improvements: Enhance data merging by balancing recency, completeness, and quality to ensure consistent and accurate matching.
Conclusions and Next Steps
Note: See Appendix 6.4 for proposed assistance in implementing the next steps.
Conclusions
Existing matching solution is overly complex, with too many free parameters and ways it can fail
It needs a radical overhaul to:
simplify management of quality and accuracy
improve logging and auditing
support testing at scale
create an easy deployment pathway
remove as much mainentance as possible from UNCHR
support synchronisation (out of the box)
whilst
maintaining all critical features
being much more cost effective
Conclusions and Next Steps
Long-Term Improvements:
Refine the cascaded matching workflow (with iris matching prioritized).
Evaluate and implement re-platforming options to achieve a more cost-effective and scalable system.
Note: See Appendix 6.4 for proposed assistance in implementing the next steps.
Immediate Priorities:
Look at replacement matching algorithms to reduce field server cost
Consider a new testing framework to support both load and regression testing.
Conduct empirical studies on sequential matching and also face recognition.