Tactile perception is a critical component of solving real-world manipulation tasks, but tactile sensors for manipulation have barriers to use such as fragility and cost. In this work, we engage a robust, low-cost tactile sensor, BeadSight, as an alternative to precise pre-calibrated sensors for a pretraining approach to manipulation. We show that tactile pretraining, even with a low-fidelity sensor as BeadSight, can improve an imitation learning agent's performance on complex manipulation tasks. We demonstrate this method against a baseline USB cable plugging task, previously achieved with a much higher precision GelSight sensor as the tactile input to pretraining. Our best BeadSight pretrained visuo-tactile agent completed the task with 70% accuracy compared to 85% for the best GelSight pretrained visuo-tactile agent, with vision-only inference for both.
Low Fidelity Visuo-Tactile Pretraining Improves Vision-Only Manipulation Performance
Tactile pretraining with a low-fidelity sensor improves an imitation learning agent's performance on manipulation tasks, achieving 70% accuracy compared to 85% with a high-precision sensor.
- Year
- 2024
- Venue
- arXiv 2024
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- 3
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- Abstract onlyARXIV-DEFAULT
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- arxiv.org/abs/2406.15639ARXIV-DEFAULT
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