arXiv Open Access 2022

Integrating Symmetry into Differentiable Planning with Steerable Convolutions

Linfeng Zhao Xupeng Zhu Lingzhi Kong Robin Walters Lawson L. S. Wong
Lihat Sumber

Abstrak

We study how group symmetry helps improve data efficiency and generalization for end-to-end differentiable planning algorithms when symmetry appears in decision-making tasks. Motivated by equivariant convolution networks, we treat the path planning problem as \textit{signals} over grids. We show that value iteration in this case is a linear equivariant operator, which is a (steerable) convolution. This extends Value Iteration Networks (VINs) on using convolutional networks for path planning with additional rotation and reflection symmetry. Our implementation is based on VINs and uses steerable convolution networks to incorporate symmetry. The experiments are performed on four tasks: 2D navigation, visual navigation, and 2 degrees of freedom (2DOFs) configuration space and workspace manipulation. Our symmetric planning algorithms improve training efficiency and generalization by large margins compared to non-equivariant counterparts, VIN and GPPN.

Topik & Kata Kunci

Penulis (5)

L

Linfeng Zhao

X

Xupeng Zhu

L

Lingzhi Kong

R

Robin Walters

L

Lawson L. S. Wong

Format Sitasi

Zhao, L., Zhu, X., Kong, L., Walters, R., Wong, L.L.S. (2022). Integrating Symmetry into Differentiable Planning with Steerable Convolutions. https://arxiv.org/abs/2206.03674

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Tahun Terbit
2022
Bahasa
en
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arXiv
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Open Access ✓