Document detail
ID

oai:arXiv.org:2409.12190

Topic
Computer Science - Robotics Computer Science - Computer Vision...
Author
Zhan, Zitong Xu, Huan Fang, Zihang Wei, Xinpeng Hu, Yaoyu Wang, Chen
Category

Computer Science

Year

2024

listing date

9/25/2024

Keywords
learning efficiency computer deep
Metrics

Abstract

Bundle adjustment (BA) is a critical technique in various robotic applications, such as simultaneous localization and mapping (SLAM), augmented reality (AR), and photogrammetry.

BA optimizes parameters such as camera poses and 3D landmarks to align them with observations.

With the growing importance of deep learning in perception systems, there is an increasing need to integrate BA with deep learning frameworks for enhanced reliability and performance.

However, widely-used C++-based BA frameworks, such as GTSAM, g$^2$o, and Ceres, lack native integration with modern deep learning libraries like PyTorch.

This limitation affects their flexibility, adaptability, ease of debugging, and overall implementation efficiency.

To address this gap, we introduce an eager-mode BA framework seamlessly integrated with PyPose, providing PyTorch-compatible interfaces with high efficiency.

Our approach includes GPU-accelerated, differentiable, and sparse operations designed for 2nd-order optimization, Lie group and Lie algebra operations, and linear solvers.

Our eager-mode BA on GPU demonstrates substantial runtime efficiency, achieving an average speedup of 18.5$\times$, 22$\times$, and 23$\times$ compared to GTSAM, g$^2$o, and Ceres, respectively.

Zhan, Zitong,Xu, Huan,Fang, Zihang,Wei, Xinpeng,Hu, Yaoyu,Wang, Chen, 2024, Bundle Adjustment in the Eager Mode

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