Paper ID: 2503.04838 • Published Mar 5, 2025
Combined Physics and Event Camera Simulator for Slip Detection
Thilo Reinold, Suman Ghosh, Guillermo Gallego
Technische Universit¨at Berlin•Einstein Center for Digital Future
TL;DR
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Robot manipulation is a common task in fields like industrial manufacturing.
Detecting when objects slip from a robot's grasp is crucial for safe and
reliable operation. Event cameras, which register pixel-level brightness
changes at high temporal resolution (called ``events''), offer an elegant
feature when mounted on a robot's end effector: since they only detect motion
relative to their viewpoint, a properly grasped object produces no events,
while a slipping object immediately triggers them. To research this feature,
representative datasets are essential, both for analytic approaches and for
training machine learning models. The majority of current research on slip
detection with event-based data is done on real-world scenarios and manual data
collection, as well as additional setups for data labeling. This can result in
a significant increase in the time required for data collection, a lack of
flexibility in scene setups, and a high level of complexity in the repetition
of experiments. This paper presents a simulation pipeline for generating slip
data using the described camera-gripper configuration in a robot arm, and
demonstrates its effectiveness through initial data-driven experiments. The use
of a simulator, once it is set up, has the potential to reduce the time spent
on data collection, provide the ability to alter the setup at any time,
simplify the process of repetition and the generation of arbitrarily large data
sets. Two distinct datasets were created and validated through visual
inspection and artificial neural networks (ANNs). Visual inspection confirmed
photorealistic frame generation and accurate slip modeling, while three ANNs
trained on this data achieved high validation accuracy and demonstrated good
generalization capabilities on a separate test set, along with initial
applicability to real-world data. Project page:
this https URL
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