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Case study
Baiqa System
The Challenge
Facilities with dozens of IP cameras often rely on manual monitoring, which is expensive and error-prone. The client needed an AI-driven system that detects critical events and surfaces them immediately.
- Manual monitoring misses incidents during high-volume periods
- Need for real-time detection across multiple camera streams
- Event classification, search, and alerting requirements
- Reliability constraints for 24/7 operations
Note: This was a confidential engagement, so we keep sensitive implementation details and client specifics private.
Our Solution
We built Baiqa System as an end-to-end computer vision pipeline: ingest RTSP streams, run real-time detections, aggregate events, and present actionable insights in a dashboard.
- IP camera ingestion (RTSP) with stream health monitoring
- Real-time detection and event triggers (alerts + event timelines)
- Identity & access foundations for secure multi-user operations
- Searchable event history for audits and investigations
- Deployment patterns for facility environments
Challenges We Overcame
- Stream variability: Handling different camera models, bitrates, and lighting conditions
- Low-latency inference: Optimizing inference to keep alert delays minimal
- False positives: Improving precision via tuning, thresholds, and targeted training
- Operational reliability: Building health checks and restart strategies for 24/7 uptime
Technology Stack
Python
Computer Vision
PyTorch
RTSP Streams
API Services
PostgreSQL
Results & Impact
- Faster incident response through real-time alerts
- Reduced reliance on continuous manual monitoring
- Improved visibility with searchable event timelines
- Foundation for adding new detections as operational needs evolve
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