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MANIPULATION

Autonomous Textile Sorting Facility and Digital Twin Utilizing an AI-Reinforced Collaborative Robot

Torbjørn Seim Halvorsen, Ilya Tyapin, Ajit Jha

Year
2025
Citations
6
Access
Open access

Abstract

This paper presents the design and implementation of an autonomous robotic facility for textile sorting and recycling, leveraging advanced computer vision and machine learning technologies. The system enables real-time textile classification, localization, and sorting on a dynamically moving conveyor belt. A custom-designed pneumatic gripper is developed for versatile textile handling, optimizing autonomous picking and placing operations. Additionally, digital simulation techniques are utilized to refine robotic motion and enhance overall system reliability before real-world deployment. The multi-threaded architecture facilitates the concurrent and efficient execution of textile classification, robotic manipulation, and conveyor belt operations. Key contributions include (a) dynamic and real-time textile detection and localization, (b) the development and integration of a specialized robotic gripper, (c) real-time autonomous robotic picking from a moving conveyor, and (d) scalability in sorting operations for recycling automation across various industry scales. The system progressively incorporates enhancements, such as queuing management for continuous operation and multi-thread optimization. Advanced material detection techniques are also integrated to ensure compliance with the stringent performance requirements of industrial recycling applications.

Keywords

SortingTextileRobotComputer scienceEngineeringArtificial intelligenceHuman–computer interactionManufacturing engineeringMaterials scienceComposite material

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