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VISION Stuttgart 2022: Packaging Quality Assurance based on AI & Computer Vision​

Discover how AI-powered Computer Vision is transforming packaging quality assurance! Watch our live demo from VISION Stuttgart 2022 and see PerCV.ai in action—taking Quality Control Automation to the next level.

Key Functionalities

Product Defect Detection – Identifies dents, spills, tears, deformations, and scratches, eliminating the need for manual inspection
Packaging Identification & Counting – Ensures accurate tracking and monitoring of packaged goods
Real-time QA, QC, and Production Analytics – Provides instant insights for better decision-making
Automated Triggering – Activates rejection systems, alarms, and other automated responses upon specific events
Seamless Integration – Works with existing ERP, WMS, PLC, and industrial automation systems

Why PerCV.ai?

Irida Labs’ PerCV.ai empowers machines with human-like understanding, capturing defects that traditional Computer Vision systems miss. Our AI-driven approach ensures precise, real-time quality control for enhanced efficiency and accuracy in production lines.

Industry 4.0 Slide 1
Warehouse Monitoring

pallets, inventory, forklifts, trucks, PPE compliance, workstation occupancy

Quality Inspection

surface defects, printing accuracy, quality assurance, conveyor belts

Product QR Scanning

QR Detection, Real-Time Decoding, 3-Axis Tolerance

Industry 4.0 Slide 2
Personal Protective Equipment detection

helmets, hard hats, vests, worker classification, safety logs & analytics

vehicle recognition

forklifts, jack lifts, trucks, loading process, people proximity

Open air product counting

Pallets, packages, loading process monitoring, loading docks

Industry 4.0 Slide 3
Gauge Digitization

analogue to digital, real-time value reading, 24/7, unsupervised

Laser Monitoring

laser cutting, laser welding, additive process monitoring, quality inspection

person area intrusion

security, safety, area commissioning, access control, people analytics

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