Learning-Based Bending Stiffness Parameter Estimation by a Drape Tester

Author:

Feng Xudong1,Huang Wenchao2,Xu Weiwei3,Wang Huamin2

Affiliation:

1. Zhejiang University, China and Style3D Research, China

2. Style3D Research, China

3. Zhejiang University, China

Abstract

Real-world fabrics often possess complicated nonlinear, anisotropic bending stiffness properties. Measuring the physical parameters of such properties for physics-based simulation is difficult yet unnecessary, due to the persistent existence of numerical errors in simulation technology. In this work, we propose to adopt a simulation-in-the-loop strategy: instead of measuring the physical parameters, we estimate the simulation parameters to minimize the discrepancy between reality and simulation. This strategy offers good flexibility in test setups, but the associated optimization problem is computationally expensive to solve by numerical methods. Our solution is to train a regression-based neural network for inferring bending stiffness parameters, directly from drape features captured in the real world. Specifically, we choose the Cusick drape test method and treat multiple-view depth images as the feature vector. To effectively and efficiently train our network, we develop a highly expressive and physically validated bending stiffness model, and we use the traditional cantilever test to collect the parameters of this model for 618 real-world fabrics. Given the whole parameter data set, we then construct a parameter subspace, generate new samples within the sub-space, and finally simulate and augment synthetic data for training purposes. The experiment shows that our trained system can replace cantilever tests for quick, reliable and effective estimation of simulation-ready parameters. Thanks to the use of the system, our simulator can now faithfully simulate bending effects comparable to those in the real world.

Funder

NSFC

Publisher

Association for Computing Machinery (ACM)

Subject

Computer Graphics and Computer-Aided Design

Reference66 articles.

1. ASTM. 2016. ASTM D4032: Standard Test Method for Stiffness of Fabric by the Circular Bend Procedure. (Dec . 2016 ). ASTM. 2016. ASTM D4032: Standard Test Method for Stiffness of Fabric by the Circular Bend Procedure. (Dec. 2016).

2. ASTM. 2018. ASTM D1388: Standard Test Method for Stiffness of Fabrics. (July 2018 ). ASTM. 2018. ASTM D1388: Standard Test Method for Stiffness of Fabrics. (July 2018).

3. Large steps in cloth simulation

4. Jonathan T. Barron and Jitendra Malik. 2013. Intrinsic Scene Properties from a Single RGB-D Image . In 2013 IEEE Conference on Computer Vision and Pattern Recognition. 17--24 . Jonathan T. Barron and Jitendra Malik. 2013. Intrinsic Scene Properties from a Single RGB-D Image. In 2013 IEEE Conference on Computer Vision and Pattern Recognition. 17--24.

5. Miklos Bergou , Max Wardetzky , David Harmon , Denis Zorin , and Eitan Grinspun . 2006 . A Quadratic Bending Model for Inextensible Surfaces . In Proceedings of SGP (Cagliari , Sardinia, Italy). 227--230. Miklos Bergou, Max Wardetzky, David Harmon, Denis Zorin, and Eitan Grinspun. 2006. A Quadratic Bending Model for Inextensible Surfaces. In Proceedings of SGP (Cagliari, Sardinia, Italy). 227--230.

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