AI-based exam monitoring combines several technologies to create a seamless and secure testing experience. The process typically includes:
a) Identity Verification
Before an exam begins, AI verifies the candidate’s identity using facial recognition, document scanning, and biometric validation. This eliminates impersonation and ensures that only authorized students can access the test.
b) Behavior Tracking
During the exam, AI tools analyze candidate behavior using computer vision and audio analytics. It can detect eye movement patterns, background noises, body posture changes, and even if a candidate leaves the test window.
c) Real-Time Alerts
If AI identifies unusual activity — like multiple people appearing in the frame, switching tabs, or speaking during the test — it flags these events in real time for review by human proctors.
d) Data Analytics and Reporting
After the test, AI generates a detailed report highlighting potential red flags and provides insights on overall test integrity. This hybrid model allows human invigilators to make the final call based on AI’s findings.