Benchmarking Visual-Inertial Deep Multimodal Fusion for Relative Pose Regression and Odometry-aided Absolute Pose Regression

Ott F, Raichur NL, Ruegamer D, Feigl T, Neumann H, Bischl B, Mutschler C (2023)


Publication Language: English

Publication Type: Other publication type

Publication year: 2023

Publisher: arXiv

City/Town: arXiv Computer Vision and Pattern Recognition (cs.CV)

Pages Range: 1-29

Conference Proceedings Title: IEEE Conference on Computer Vision and Pattern Recognition (CVPR)

Event location: Vancouver, Canada

DOI: 10.48550/arXiv.2208.00919

Abstract

Visual-inertial localization is a key problem in com- puter vision and robotics applications such as virtual reality, self-driving cars, and aerial vehicles. The goal is to estimate an accurate pose of an object when either the environment or the dynamics are known. Absolute pose regression (APR) techniques directly regress the absolute pose from an image input in a known scene using convolutional and spatio-temporal networks. Odometry methods perform relative pose regression (RPR) that predicts the relative pose from a known object dynamic (visual or inertial inputs). The localization task can be improved by retriev- ing information from both data sources for a cross-modal setup, which is a challenging problem due to contradictory tasks. In this work, we conduct a benchmark to evaluate deep multimodal fusion based on pose graph optimization and attention networks. Auxiliary and Bayesian learning are utilized for the APR task. We show accuracy improvements for the APR-RPR task and for the RPR-RPR task for aerial vehicles and hand-held devices. We conduct experiments on the EuRoC MAV and PennCOSYVIO datasets and record and evaluate a novel industry dataset.

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How to cite

APA:

Ott, F., Raichur, N.L., Ruegamer, D., Feigl, T., Neumann, H., Bischl, B., & Mutschler, C. (2023). Benchmarking Visual-Inertial Deep Multimodal Fusion for Relative Pose Regression and Odometry-aided Absolute Pose Regression. arXiv Computer Vision and Pattern Recognition (cs.CV): arXiv.

MLA:

Ott, Felix, et al. Benchmarking Visual-Inertial Deep Multimodal Fusion for Relative Pose Regression and Odometry-aided Absolute Pose Regression. arXiv Computer Vision and Pattern Recognition (cs.CV): arXiv, 2023.

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