PyPose: A Library for Robot Learning with Physics-based Optimization
Abstract
Deep learning has had remarkable success in robotic perception, but its data-centric nature suffers when it comes to generalizing to ever-changing environments. By contrast, physics-based optimization generalizes better, but it does not perform as well in complicated tasks due to the lack of high-level semantic information and reliance on manual parametric tuning. To take advantage of these two complementary worlds, we present PyPose: a robotics-oriented, PyTorch-based library that combines deep perceptual models with physics-based optimization. PyPose's architecture is tidy and well-organized, it has an imperative style interface and is efficient and user-friendly, making it easy to integrate into real-world robotic applications. Besides, it supports parallel computing of any order gradients of Lie groups and Lie algebras and -order optimizers, such as trust region methods. Experiments show that PyPose achieves more than speedup in computation compared to the state-of-the-art libraries. To boost future research, we provide concrete examples for several fields of robot learning, including SLAM, planning, control, and inertial navigation.
Cite
@article{arxiv.2209.15428,
title = {PyPose: A Library for Robot Learning with Physics-based Optimization},
author = {Chen Wang and Dasong Gao and Kuan Xu and Junyi Geng and Yaoyu Hu and Yuheng Qiu and Bowen Li and Fan Yang and Brady Moon and Abhinav Pandey and Aryan and Jiahe Xu and Tianhao Wu and Haonan He and Daning Huang and Zhongqiang Ren and Shibo Zhao and Taimeng Fu and Pranay Reddy and Xiao Lin and Wenshan Wang and Jingnan Shi and Rajat Talak and Kun Cao and Yi Du and Han Wang and Huai Yu and Shanzhao Wang and Siyu Chen and Ananth Kashyap and Rohan Bandaru and Karthik Dantu and Jiajun Wu and Lihua Xie and Luca Carlone and Marco Hutter and Sebastian Scherer},
journal= {arXiv preprint arXiv:2209.15428},
year = {2023}
}
Comments
Project Website: https://pypose.org Documentation: https://pypose.org/docs/ Tutorial: https://pypose.org/tutorials/ Source code: https://github.com/pypose/pypose