VI for manufacturing can improve product quality by reducing the risk of defects and associated costs. As for the results, businesses can be more efficient and profitable.
Optimize The Effectiveness of Quality Control Processes
- Monitor and analyze product quality automatically with the aim of increasing productivity and process efficiency.
- Assessments are instead made by image data sets or visual data.
- Reports are presented to users via a real time monitoring dashboard.
Why Using AI for Quality Control?
Manual Inspection
- Limit defect detections at a time
- Depends on the operator’s perception and experience
- Low consistency of product quality checking
- Require more time and lack of accuracy
AI Inspection
- Optimizes the effectiveness of quality control
- Provides high precision to detect the smallest defects
- Provides significant parameter for detection and monitor data thoroughly
- Scrap cost and time efficiency
Product / Object Counting
- AI-based computer vision systems can accurately and precisely count products.
- Product counting is a repetitive task that can be time-consuming if done manually. AI automates this process, allowing human workers to focus on more complex and value-added tasks, leading to increased overall operational efficiency.
- Manual counting is susceptible to human errors, such as miscounts or inaccuracies. AI reduces the likelihood of errors and provides more reliable and consistent data for decision-making.