Learning to Predict Grip Quality from Simulation: Establishing a Digital Twin to Generate Simulated Data for a Grip Stability Metric
Stefanie Wucherer, Robert McMurray, Kok Yew Ng, Florian Kerber

TL;DR
This paper develops a digital twin simulation to generate synthetic tactile data for training an AI model that predicts grip stability and slip force, enhancing robotic manipulation in industrial assembly.
Contribution
The paper introduces a digital twin for simulating tactile sensor data, enabling efficient training of grip stability prediction models without extensive real-world experiments.
Findings
Simulated RGB contact images closely match experimental data.
Synthetic data accurately reproduces maximum pull forces across object classes.
The digital twin accelerates data generation for grip stability prediction.
Abstract
A robust grip is key to successful manipulation and joining of work pieces involved in any industrial assembly process. Stability of a grip depends on geometric and physical properties of the object as well as the gripper itself. Current state-of-the-art algorithms can usually predict if a grip would fail. However, they are not able to predict the force at which the gripped object starts to slip, which is critical as the object might be subjected to external forces, e.g. when joining it with another object. This research project aims to develop a AI-based approach for a grip metric based on tactile sensor data capturing the physical interactions between gripper and object. Thus, the maximum force that can be applied to the object before it begins to slip should be predicted before manipulating the object. The RGB image of the contact surface between the object and gripper jaws obtained…
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Taxonomy
TopicsRobot Manipulation and Learning · Muscle activation and electromyography studies · Advanced Sensor and Energy Harvesting Materials
