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Papers/Robot Instance Segmentation with Few Annotations for Grasp...

Robot Instance Segmentation with Few Annotations for Grasping

Moshe Kimhi, David Vainshtein, Chaim Baskin, Dotan Di Castro

2024-07-01Semantic SegmentationInstance Segmentation
PaperPDFCode(official)

Abstract

The ability of robots to manipulate objects relies heavily on their aptitude for visual perception. In domains characterized by cluttered scenes and high object variability, most methods call for vast labeled datasets, laboriously hand-annotated, with the aim of training capable models. Once deployed, the challenge of generalizing to unfamiliar objects implies that the model must evolve alongside its domain. To address this, we propose a novel framework that combines Semi-Supervised Learning (SSL) with Learning Through Interaction (LTI), allowing a model to learn by observing scene alterations and leverage visual consistency despite temporal gaps without requiring curated data of interaction sequences. As a result, our approach exploits partially annotated data through self-supervision and incorporates temporal context using pseudo-sequences generated from unlabeled still images. We validate our method on two common benchmarks, ARMBench mix-object-tote and OCID, where it achieves state-of-the-art performance. Notably, on ARMBench, we attain an $\text{AP}_{50}$ of $86.37$, almost a $20\%$ improvement over existing work, and obtain remarkable results in scenarios with extremely low annotation, achieving an $\text{AP}_{50}$ score of $84.89$ with just $1 \%$ of annotated data compared to $72$ presented in ARMBench on the fully annotated counterpart.

Results

TaskDatasetMetricValueModel
Instance SegmentationARMBenchAP5086.37RISE (VIT-B)
Instance SegmentationARMBenchAP7577.51RISE (VIT-B)
Instance SegmentationARMBenchAP5084.74RISE (R101)
Instance SegmentationARMBenchAP7575.93RISE (R101)
Instance SegmentationARMBenchAP5083.53RISE (R50)
Instance SegmentationARMBenchAP7575.15RISE (R50)
Instance SegmentationARMBenchAP5081.2Mask2Former
Instance SegmentationARMBenchAP7574Mask2Former
Instance SegmentationARMBenchAP5077.03Deformable DETR
Instance SegmentationARMBenchAP7563.4Deformable DETR

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