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Writer's pictureAyşegül Yıldız

Revolutionizing Fabric Quality Surface Control with Artificial Intelligence: Serkon.AI

Updated: Oct 10


A new era is beginning in the textile industry, replacing traditional human-centric inspections with the advent of artificial intelligence technology. Serkon.AI is reshaping fabric control processes from start to finish.


In tandem with technological advancements, the textile industry is focusing on more efficient, high-quality, and sustainable production processes. The integration of Serkon.AI into this sector brings about significant transformation in fabric control.


Artificial intelligence, encompassing machine learning and deep learning, offers various advantages in textile manufacturing processes. With capabilities such as big data analytics, error recognition, and predictive analysis, artificial intelligence provides solutions tailored to the needs of the textile industry.


Serkon.AI enhances fabric quality control in production, swiftly and accurately detecting errors. Through algorithms based on artificial intelligence, issues like color discrepancies and weaving errors are automatically identified.


This technology increases efficiency in production processes by pinpointing fabric flaws, consequently reducing costs. This leads to a decrease in waste rates in the sector, promoting a sustainable production process.


Extensive research and development efforts have demonstrated the success of Serkon.AI in all types of fabric (with a 98.3% success rate). The positive impact of artificial intelligence technology on fabric control will diminish human/operator dependency and enhance control success.


Serkon.AI utilizes optical sensors, image analysis algorithms, and machine learning techniques to provide real-time fabric control.


The implementation of Serkon.AI makes fabric control processes in the textile industry smarter, faster, and more effective. This technology not only elevates quality standards but also contributes to sustainable production by reducing waste in manufacturing processes.





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