2021
DOI: 10.48550/arxiv.2112.01807
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Reducing Tactile Sim2Real Domain Gaps via Deep Texture Generation Networks

Abstract: Recently simulation methods have been developed for optical tactile sensors to enable the Sim2Real learning, i.e., firstly training models in simulation before deploying them on the real robot. However, some artefacts in the real objects are unpredictable, such as imperfections caused by fabrication processes, or scratches by the natural wear and tear, and thus cannot be represented in the simulation, resulting in a significant gap between the simulated and real tactile images. To address this Sim2Real gap, we… Show more

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