Introduces the SteelDS dataset with 24,297 annotated frames of E40 steel and copper scrap for object detection and instance segmentation to aid industrial sorting.
PASTA: Vision Transformer Patch Aggregation for Weakly Supervised Target and Anomaly Segmentation
1 Pith paper cite this work. Polarity classification is still indexing.
abstract
Detecting unseen anomalies in unstructured environments presents a critical challenge for industrial and agricultural applications such as material recycling and weeding. Existing perception systems frequently fail to satisfy the strict operational requirements of these domains, specifically real-time processing, pixel-level segmentation precision, and robust accuracy, due to their reliance on exhaustively annotated datasets. To address these limitations, we propose a weakly supervised pipeline for object segmentation and classification using weak image-level supervision called 'Patch Aggregation for Segmentation of Targets and Anomalies' (PASTA). By comparing an observed scene with a nominal reference, PASTA identifies Target and Anomaly objects through distribution analysis in self-supervised Vision Transformer (ViT) feature spaces. Our pipeline utilizes semantic text-prompts via the Segment Anything Model 3 to guide zero-shot object segmentation. Evaluations on a custom steel scrap recycling dataset and a plant dataset demonstrate a 75.8% training time reduction of our approach to domain-specific baselines. While being domain-agnostic, our method achieves superior Target (up to 88.3% IoU) and Anomaly (up to 63.5% IoU) segmentation performance in the industrial and agricultural domain.
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cs.RO 1years
2026 1verdicts
UNVERDICTED 1representative citing papers
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SteelDS: A High-Resolution Video Dataset of E40 Steel Scrap for Object Detection and Instance Segmentation
Introduces the SteelDS dataset with 24,297 annotated frames of E40 steel and copper scrap for object detection and instance segmentation to aid industrial sorting.