Robo-GS: A Physics Consistent Spatial-Temporal Model for Robotic Arm with Hybrid Representation
Real2Sim2Real plays a critical role in robotic arm control and reinforcement learning, yet bridging this gap remains a significant challenge due to the complex physical properties of robots and the objects they manipulate. Existing methods lack a comprehensive solution to accurately reconstruct real...
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Zusammenfassung: | Real2Sim2Real plays a critical role in robotic arm control and reinforcement
learning, yet bridging this gap remains a significant challenge due to the
complex physical properties of robots and the objects they manipulate. Existing
methods lack a comprehensive solution to accurately reconstruct real-world
objects with spatial representations and their associated physics attributes.
We propose a Real2Sim pipeline with a hybrid representation model that
integrates mesh geometry, 3D Gaussian kernels, and physics attributes to
enhance the digital asset representation of robotic arms.
This hybrid representation is implemented through a Gaussian-Mesh-Pixel
binding technique, which establishes an isomorphic mapping between mesh
vertices and Gaussian models. This enables a fully differentiable rendering
pipeline that can be optimized through numerical solvers, achieves
high-fidelity rendering via Gaussian Splatting, and facilitates physically
plausible simulation of the robotic arm's interaction with its environment
using mesh-based methods.
The code,full presentation and datasets will be made publicly available at
our website https://robostudioapp.com |
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DOI: | 10.48550/arxiv.2408.14873 |