Vision-Based Online Key Point Estimation of Deformable Robots
Hehui Zheng, Sebastian Pinzello, Barnabas Gavin Cangan, Thomas Buchner, Robert K. Katzschmann

TL;DR
This paper introduces a neural network-based method for real-time, marker-less 3D key point estimation of deformable robots using dual camera images, improving accuracy and robustness over existing techniques.
Contribution
It presents a novel supervised learning approach for online shape estimation of soft robots without markers, enhancing accuracy and robustness.
Findings
Outperforms state-of-the-art marker-less methods by up to 4.5% in accuracy
Operates online at 25 Hz with dual camera inputs
Demonstrates effectiveness on various deformable robotic systems
Abstract
The precise control of soft and continuum robots requires knowledge of their shape, which has, in contrast to classical rigid robots, infinite degrees of freedom. To partially reconstruct the shape, proprioceptive techniques use built-in sensors resulting in inaccurate results and increased fabrication complexity. Exteroceptive methods so far rely on expensive tracking systems with reflective markers placed on all components, which are infeasible for deformable robots interacting with the environment due to marker occlusion and damage. Here, a regression approach is presented for 3D key point estimation using a convolutional neural network. The proposed approach takes advantage of data-driven supervised learning and is capable of online marker-less estimation during inference. Two images of a robotic system are taken simultaneously at 25 Hz from two different perspectives, and are fed…
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Taxonomy
TopicsSoft Robotics and Applications · Advanced Surface Polishing Techniques · Image Processing Techniques and Applications
