Pose estimation and bin picking for deformable products
Benjamin Joffe, Tevon Walker. Remi Gourdon, Konrad Ahlin

TL;DR
This paper presents a deep learning-based robotic system for pose estimation and bin picking of deformable poultry products, demonstrating high accuracy and generalization in real-world agricultural settings.
Contribution
It introduces a novel approach combining deep learning and robotic manipulation for handling deformable food items, specifically poultry, in unstructured environments.
Findings
Achieves high accuracy in bin picking and pose estimation
Generalizes well to variations in poultry products
Successfully operates in real-world agricultural environments
Abstract
Robotic systems in manufacturing applications commonly assume known object geometry and appearance. This simplifies the task for the 3D perception algorithms and allows the manipulation to be more deterministic. However, those approaches are not easily transferable to the agricultural and food domains due to the variability and deformability of natural food. We demonstrate an approach applied to poultry products that allows picking up a whole chicken from an unordered bin using a suction cup gripper, estimating its pose using a Deep Learning approach, and placing it in a canonical orientation where it can be further processed. Our robotic system was experimentally evaluated and is able to generalize to object variations and achieves high accuracy on bin picking and pose estimation tasks in a real-world environment.
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