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arxiv:2409.11512

Good Grasps Only: A data engine for self-supervised fine-tuning of pose estimation using grasp poses for verification

Published on Sep 17, 2024
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Abstract

A self-supervised fine-tuning method for pose estimation enables rapid setup and improved performance in bin picking tasks through automatic data generation and in-hand validation.

AI-generated summary

In this paper, we present a novel method for self-supervised fine-tuning of pose estimation. Leveraging zero-shot pose estimation, our approach enables the robot to automatically obtain training data without manual labeling. After pose estimation the object is grasped, and in-hand pose estimation is used for data validation. Our pipeline allows the system to fine-tune while the process is running, removing the need for a learning phase. The motivation behind our work lies in the need for rapid setup of pose estimation solutions. Specifically, we address the challenging task of bin picking, which plays a pivotal role in flexible robotic setups. Our method is implemented on a robotics work-cell, and tested with four different objects. For all objects, our method increases the performance and outperforms a state-of-the-art method trained on the CAD model of the objects. Project page available at gogoengine.github.io

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