Abstract

Visual inspection is the cornerstone of most quality control workflows. When performed by humans the process is expensive, prone to error, and inefficient: a 10%-20% pseudo scrap and slippage rate and production bottlenecks are not uncommon. Under the name IQZeProd (Inline Quality control for Zero-error Products), researchers at Fraunhofer IWU are developing new, inline monitoring solutions to recognize defects as early in the production process as possible for a variety of materials such as wood, plastics, metals, and painted surfaces. The system uses multi-sensor data fusion from a variety of sensors to recognize structural and surface defects as the components travel the production line. The goal is to make industrial manufacturing processes more robust and sustainable by increasing process reliability and improving defect detection. At the heart of the system is the researchers' own Xeidana® software framework and a matrix of twenty industrial cameras. The researchers had very specific camera criteria: global-shutter monochrome sensor; low-jitter real-time triggering; reliable data transmission at very high data rates and straightforward integration into their software framework.

Keywords:
Process (computing) Sensor fusion Scrap Visual inspection Software Reliability (semiconductor) Production (economics) Quality (philosophy) Variety (cybernetics)

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Topics

Industrial Vision Systems and Defect Detection
Physical Sciences →  Engineering →  Industrial and Manufacturing Engineering
Image and Object Detection Techniques
Physical Sciences →  Computer Science →  Computer Vision and Pattern Recognition
Thermography and Photoacoustic Techniques
Physical Sciences →  Engineering →  Mechanics of Materials

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