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Computer Vision Systems

Cameras No Longer Just Record — They Decide in Real Time

Traditional cameras are passive monitoring tools; they record and you review. AI-driven computer vision is active: it analyses the camera feed in real time, extracts meaningful information and takes automated decisions based on predefined rules.

At Digital Bridge we build custom computer vision systems for object detection, classification, anomaly detection and character recognition (OCR). We can integrate with your existing cameras or deploy systems from scratch.

Use Cases

Production Line Quality Control

Problem: Human-eye inspection grows error-prone with fatigue and can't keep up with line speed.

Solution: Every product on the conveyor is captured in seconds. The AI model detects scratches, cracks, color shifts and shape defects, and rejects faulty units off the line.

Object Counting & Stock Verification

Problem: Counting items on shelves or pallets manually is slow and error-prone.

Solution: Items are counted automatically from the camera feed and their positions are mapped. Order packing and warehouse verification become automatic.

Document & Barcode Reading (OCR)

Problem: Manually entering data from invoices, dispatch notes and labels is slow and error-prone.

Solution: OCR + AI automatically reads text, barcodes and QR codes from documents or labels and pushes them into your system.

Workplace Safety Monitoring

Problem: PPE compliance (helmets, vests, safety glasses) cannot be enforced without an inspector.

Solution: AI checks the camera feed in real time for personal protective equipment and raises an alarm on violations.

Vehicle & Plate Recognition

Problem: Vehicle entry-exit relies on manual logs or barrier operators.

Solution: The LPR algorithm reads plates from the camera frame, matches them against the database and controls the barrier automatically.

Face Recognition & Crowd Analytics

Problem: Detecting site occupancy and unauthorized entries creates security gaps.

Solution: Registered faces are recognized in the camera feed, occupancy metrics are calculated, and unauthorized entries trigger real-time alerts.

Our Technical Stack

  • YOLOv8 / EfficientDet object detection
  • OpenCV, TensorFlow, PyTorch stack
  • Edge AI (Jetson Nano/Orin, Raspberry Pi)
  • Real-time inference (<100ms latency)
  • IP camera integration (RTSP / ONVIF)
  • Cloud or on-premise model execution
  • Model fine-tuning with custom datasets
  • REST API integration with existing systems

Project Development Process

01
Discovery & Data Analysis

Target object/state is defined. The required image dataset for training is specified, then collected from the field or generated synthetically.

02
Model Training & Test

The model is trained on existing or custom data. Accuracy, speed and resource usage are optimized.

03
System Integration

The model is connected to the existing camera infrastructure and operational system. Alerting and action mechanisms are wired up.

04
Go-Live & Monitoring

The system goes live, model performance is monitored and continuously improved with new data.

Your Existing Cameras Can Be Reused

If your IP cameras support RTSP/ONVIF, computer vision can be deployed without buying new cameras. We turn your existing security camera setup into an intelligent analytics platform.

Talk to an Expert

Ready to Build Your Custom Solution?