Quality control plays a vital role across numerous industries, where even minor defects can lead to major financial losses, compromised product integrity, or serious risks to health and safety. Between 2004 and 2016, the global cost of product recalls due to defects reached around $50 billion. One of the most high-profile cases followed in 2019–2020, when defective Takata airbags led to the recall of millions of vehicles over explosion hazards. From manufacturing and electronics to food and construction, product defects can have costly and dangerous consequences—highlighting the critical need for precise and dependable quality control.
Traditional quality inspection methods, such as manual visual checks, are prone to human error and fatigue. In contrast, AI-powered defect detection systems offer higher accuracy, consistency, and scalability. These intelligent systems can be trained to identify a wide variety of defects and are increasingly being adopted across fast-growing industries.
In this article, we’ll explore how AI is reshaping the defect detection process. We’ll look at the core technologies that make it possible, the challenges that come with implementation, and a real-world case study showcasing its impact.
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