Application of Artificial Intelligence Technology in Industrial Defect Detection
DOI:
https://doi.org/10.53469/wjimt.2025.08(06).04Keywords:
Artificial intelligence, Testing technology, Industrial production, Defect detectionAbstract
Defects are inevitable in the product generation process, and these defects can have an impact on the appearance and even functionality of the product. Defect detection is of great significance in improving product quantity, ensuring industrial safety, and environmental protection. This article analyzes from the perspective of commonly used defect point detection methods and introduces the problems and solutions currently encountered in industrial defect point detection. With the continuous development of new detection technologies and artificial intelligence, industrial defect point detection will move towards higher accuracy and efficiency, creating more value for enterprises. At the same time, the development of detection technology will promote the intelligent process of industrial production.
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