Schlosser A, Walter J, Roming L, Franke J, Reitelshöfer S (2026)
Publication Type: Conference contribution
Publication year: 2026
Publisher: Springer Science and Business Media Deutschland GmbH
Pages Range: 334-342
Conference Proceedings Title: Lecture Notes in Mechanical Engineering
Event location: Bologna, ITA
ISBN: 9783032211538
DOI: 10.1007/978-3-032-21154-5_37
Automated robotic sorting plays a central role in boosting material recovery and reducing environmental impact in the circular economy. Lightweight packaging waste consists of heterogeneous and visually complex materials. This presents persistent challenges for object-level detection and classification. Deep learning–based instance segmentation offers a scalable and precise approach for identifying target materials and contaminants under dynamic real-world conditions. A newly developed image processing pipeline integrates structured pre-processing with state-of-the-art segmentation models. These models are trained on synthetic and real datasets designed to reflect both idealized and challenging scenarios, including occlusions, clutter, and variable lighting. In controlled environments, the models achieve high segmentation accuracy and real-time performance. However, generalization drops significantly when applied to real data, especially for visually ambiguous objects. These results highlight the need for domain-adaptive training and realistic variation in dataset design. Integrating such segmentation pipelines into industrial systems improves classification, reliability, and operational efficiency. Continued development of these technologies is essential to meet regulatory goals, reduce resource consumption, and promote sustainable practices in recycling.
APA:
Schlosser, A., Walter, J., Roming, L., Franke, J., & Reitelshöfer, S. (2026). The Path to a More Efficient Circular Economy by Integrating Deep Learning into Robotic Sorting Systems. In Holger Kohl, Günther Seliger, Franz Dietrich, Giampaolo Campana (Eds.), Lecture Notes in Mechanical Engineering (pp. 334-342). Bologna, ITA: Springer Science and Business Media Deutschland GmbH.
MLA:
Schlosser, Alexander, et al. "The Path to a More Efficient Circular Economy by Integrating Deep Learning into Robotic Sorting Systems." Proceedings of the 21st Global Conference on Sustainable Manufacturing, GCSM 2025, Bologna, ITA Ed. Holger Kohl, Günther Seliger, Franz Dietrich, Giampaolo Campana, Springer Science and Business Media Deutschland GmbH, 2026. 334-342.
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