Dynamic Modeling of Hand-Object Interactions via Tactile Sensing
- URL: http://arxiv.org/abs/2109.04378v1
- Date: Thu, 9 Sep 2021 16:04:14 GMT
- Title: Dynamic Modeling of Hand-Object Interactions via Tactile Sensing
- Authors: Qiang Zhang, Yunzhu Li, Yiyue Luo, Wan Shou, Michael Foshey, Junchi
Yan, Joshua B. Tenenbaum, Wojciech Matusik, Antonio Torralba
- Abstract summary: In this work, we employ a high-resolution tactile glove to perform four different interactive activities on a diversified set of objects.
We build our model on a cross-modal learning framework and generate the labels using a visual processing pipeline to supervise the tactile model.
This work takes a step on dynamics modeling in hand-object interactions from dense tactile sensing.
- Score: 133.52375730875696
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Tactile sensing is critical for humans to perform everyday tasks. While
significant progress has been made in analyzing object grasping from vision, it
remains unclear how we can utilize tactile sensing to reason about and model
the dynamics of hand-object interactions. In this work, we employ a
high-resolution tactile glove to perform four different interactive activities
on a diversified set of objects. We build our model on a cross-modal learning
framework and generate the labels using a visual processing pipeline to
supervise the tactile model, which can then be used on its own during the test
time. The tactile model aims to predict the 3d locations of both the hand and
the object purely from the touch data by combining a predictive model and a
contrastive learning module. This framework can reason about the interaction
patterns from the tactile data, hallucinate the changes in the environment,
estimate the uncertainty of the prediction, and generalize to unseen objects.
We also provide detailed ablation studies regarding different system designs as
well as visualizations of the predicted trajectories. This work takes a step on
dynamics modeling in hand-object interactions from dense tactile sensing, which
opens the door for future applications in activity learning, human-computer
interactions, and imitation learning for robotics.
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