AI-based Lipstick Inspection System

SEA Vision Group introduces an Artificial Intelligence technology designed for the visual inspection of lipsticks.

Ai Rossetti (1)

This content was written and submitted by the supplier. It has only been modified to comply with this publication’s space and style.

The SEA Vision Group system (under development by a joint team from SEA Vision Group and ARGO Vision) uses the semantic segmentation of the areas of the lipstick (e.g. body, tip, neck, mechanism, etc.) to identify every possible flaw pixel by pixel. This is achieved by classifying areas by categories, each of which is assigned a name or label. Each part or area of the image is classified by categories and identified by a color on the screen to provide the operator with immediate information about the areas being inspected.

The system self-learns how to discern an ever-increasing variety of more and more complex defects, item-by-item. Self-learning takes place both on the basis of proprietary datasets - a mix of real and synthetic images generated with the most advanced data augmentation and neural generation techniques - and by combining the different models and parameters learned over time.


Fill out the form below to request more information about AI-based Lipstick Inspection System
Food safety excellence on a budget: The smart approach
When material costs rise and margins shrink, efficient cleaning becomes critical. Learn cost-effective sanitation strategies that enhance food safety while reducing resource consumption.
Read More
Food safety excellence on a budget: The smart approach
Liquid Foods Innovations Report
Welcome to the inaugural Packaging World/ProFood World Innovations Report on liquid food packaging, drawn from nearly 300 PACK EXPO International booth visits (Chicago, Nov. 3–6, 2024). Our editors highlight the most groundbreaking equipment and materials—supported by video demos—that promise to transform how liquid foods are processed, packaged, and delivered.
Learn More
Liquid Foods Innovations Report