DaXBench: Benchmarking Deformable Object Manipulation with Differentiable Physics
Chen, Siwei, Xu, Yiqing, Yu, Cunjun, Li, Linfeng, Ma, Xiao, Xu, Zhongwen, and Hsu, David

Publication: ICLR

Abstract: Deformable Object Manipulation (DOM) is of significant importance to both daily and industrial applications. Recent successes in differentiable physics simulators allow learning algorithms to train a policy with analytic gradients through environment dynamics, which significantly facilitates the development of DOM algorithms. However, existing DOM benchmarks are either single-object-based or non-differentiable. This leaves the questions of 1) how a task-specific algorithm performs on other tasks and 2) how a differentiable-physics-based algorithm compares with the non-differentiable ones in general. In this work, we present DaXBench, a differentiable DOM benchmark with a wide object and task coverage. DaXBench includes 9 challenging high-fidelity simulated tasks, covering rope, cloth, and liquid manipulation with various difficulty levels. To better understand the performance of general algorithms on different DOM tasks, we conduct comprehensive experiments over representative DOM methods, ranging from planning to imitation learning and reinforcement learning. In addition, we provide careful empirical studies of existing decision-making algorithms based on differentiable physics, and discuss their limitations, as well as potential future directions.

Bibtex:

@inproceedings{chen-2023-daxbench-physics,
  title = {DaXBench: Benchmarking Deformable Object Manipulation with Differentiable Physics},
  author = {Chen, Siwei and Xu, Yiqing and Yu, Cunjun and Li, Linfeng and Ma, Xiao and Xu, Zhongwen and Hsu, David},
  year = {2023},
  booktitle = {ICLR}
}