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Manufacturing Technology Insights | Tuesday, November 02, 2021
A machine vision system can inspect minute features and finish the inspection process more reliably, faster, and with fewer mistakes.
FREMONT CA: According to research, the machine vision systems industry will be worth USD 13.53 billion by 2023. The manufacturing sector accounts for the majority of the demand. Machine vision is used in assembly lines, high-speed production, hazardous environments, and inspection by manufacturing companies.
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Different Types of Inspections
In the manufacturing industry, there are two types of inspections that are commonly used:
Manual Inspection
It is the process of visually examining units during assembly by human operators. They usually rely on the naked eye or a microscope to do their work.
Automated Inspection
This includes inspections using computer vision and machine vision. Traditionally, computer vision has been used to gather images and automate image processing for quality assurance and control. The image capturing hardware, such as feeding systems, optical systems, or separation systems, is used in machine vision inspection and an integrated computer with specialized software to process images and generate output.
A machine vision system can inspect minute features and finish the inspection process more reliably, faster, and fewer mistakes. On the other hand, manual inspection allows for the application of judgment, learning on the job, and managing deviations. Machine vision can incorporate deep learning and artificial intelligence (AI). These technologies use neural networks that simulate human intelligence to recognize anomalies, components, and features while tolerating natural changes in complicated patterns. They provide the speed and reliability of a computerized system at the same time.
How AI Improves Inspection Processes
By obeying the algorithms incorporated inside, a classic machine vision system functions consistently and dependably. However, as the number of exceptions or types of flaws grows, their efficacy decreases. AI has the potential to make a difference in this situation. The self-learning algorithms can tell the difference between abnormalities and flaws, and they can adjust to natural variances. They are adaptable enough to continue inspecting even when new complexities or changes in factory floor procedures are. By combining the flexibility of human inspection with the speed and reliability of automated inspection systems, AI can improve the inspection process.
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