Realtime Simulation of Thin-Shell Deformable Materials using CNN-Based Mesh Embedding

09/26/2019
by   Qingyang Tan, et al.
1

We address the problem of accelerating thin-shell deformable object simulations by dimension reduction. We present a new algorithm to embed a high-dimensional configuration space of deformable objects in a low-dimensional feature space, where the configurations of objects and feature points have approximate one-to-one mapping. Our key technique is a graph-based convolutional neural network (CNN) defined on meshes with arbitrary topologies and a new mesh embedding approach based on physics-inspired loss term. We have applied our approach to accelerate high-resolution thin shell simulations corresponding to cloth-like materials, where the configuration space has tens of thousands of degrees of freedom. We show that our physics-inspired embedding approach leads to higher accuracy compared with prior mesh embedding methods. Finally, we show that the temporal evolution of the mesh in the feature space can also be learned using a recurrent neural network (RNN) leading to fully learnable physics simulators. After training our learned simulator runs 10-100× faster and the accuracy is high enough for robot manipulation tasks.

READ FULL TEXT

page 1

page 2

page 3

page 4

page 5

page 6

page 7

page 8

research
10/18/2017

Manipulating Highly Deformable Materials Using a Visual Feedback Dictionary

The complex physical properties of highly deformable materials like clot...
research
04/25/2021

Learning Latent Graph Dynamics for Deformable Object Manipulation

Manipulating deformable objects, such as cloth and ropes, is a long-stan...
research
02/21/2023

Graph-Transporter: A Graph-based Learning Method for Goal-Conditioned Deformable Object Rearranging Task

Rearranging deformable objects is a long-standing challenge in robotic m...
research
11/14/2019

Self-Supervised Learning of State Estimation for Manipulating Deformable Linear Objects

We demonstrate model-based, visual robot manipulation of linear deformab...
research
02/04/2022

Neural Collision Detection for Deformable Objects

We propose a neural network-based approach for collision detection with ...
research
01/22/2022

Predicting Physics in Mesh-reduced Space with Temporal Attention

Graph-based next-step prediction models have recently been very successf...
research
09/11/2023

Learning the Geodesic Embedding with Graph Neural Networks

We present GeGnn, a learning-based method for computing the approximate ...

Please sign up or login with your details

Forgot password? Click here to reset