Working principle of fully automatic visual selection machine (2)
3. Analysis and identification
Algorithm application: Use machine learning or deep learning algorithms to analyze images and determine whether items meet standards.
Defect detection: Identify surface defects, dimensional deviations, and other issues.
4. Decision making and Classification
Classification: Based on the analysis results, the system classifies items as qualified or unqualified.
Decision output: Send the classification results to the executing agency.
5. Execute actions
Sorting: Unqualified products are removed through robotic arms or conveyor belts, and qualified products continue to enter the next process.
Record: The system records each test result for easy traceability and analysis in the future.
6. Feedback and optimization
Feedback mechanism: The system continuously optimizes the algorithm based on the detection results to improve accuracy.
Continuous improvement: Regularly update software and hardware to maintain efficient device operation.
