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ScoopNet: 6DOF Pose Estimation pipeline for Origami-inspired Worm Robots

机译:Scoopnet:6DOF折叠估算管道用于折纸启发蠕虫机器人

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Origami-inspired soft and flexible robots have drawn immense attention in recent years for their wide range of medicine and engineering applications. While the ability of shape morphing presents a significant advantage, the shape-invariant pose estimation techniques are still under-explored. Pose estimation and tracking are vital to study, control and automate the locomotion of origami robots. This paper proposes ScoopNet that performs semantic segmentation and 6DOF pose estimation of origami-inspired worm robots. A vision-based deep learning model that can estimate the pose of a shape-morphing origami worm robots warrant a vast amount of annotated dataset. To overcome this, the network is trained using a self-supervised approach on a domain randomized synthetic dataset to infer the robot’s pose in real-world data. This paper also introduces a simulation setup that can be utilized to generate a massive synthetic dataset with ease.
机译:Origami-Inspired软和灵活的机器人近年来对其广泛的医学和工程应用来说都是巨大的关注。 虽然形状变形能力具有显着的优点,但仍然探索了形状不变的姿势估计技术。 姿势估算和跟踪对于研究,控制和自动化Origami机器人的运动至关重要。 本文提出了执行语义细分和6DOF折叠蠕虫机器人的SCOPNET。 基于视觉的深度学习模型,可以估计形状 - 变形折纸蠕虫机器人的姿势保证了大量的注释数据集。 为了克服这一点,网络在域随机化合成数据集上使用自我监控方法进行培训,以推断机器人在真实数据中的姿势。 本文还介绍了一种模拟设置,可用于轻松生成大量合成数据集。

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