A benchmark analysis of data‐driven and geometric approaches for robot ego‐motion estimation

Author:

Legittimo Marco1,Felicioni Simone1ORCID,Bagni Fabio23,Tagliavini Andrea3,Dionigi Alberto1,Gatti Francesco3,Verucchi Micaela2,Costante Gabriele1,Bertogna Marko23

Affiliation:

1. Department of Engineering University of Perugia Perugia Italy

2. Department of Physics, Informatics and Mathematics University of Modena and Reggio Emilia Modena Italy

3. Hipert S.r.l. Modena Italy

Abstract

AbstractIn the last decades, ego‐motion estimation or visual odometry (VO) has received a considerable amount of attention from the robotic research community, mainly due to its central importance in achieving robust localization and, as a consequence, autonomy. Different solutions have been explored, leading to a wide variety of approaches, mostly grounded on geometric methodologies and, more recently, on data‐driven paradigms. To guide researchers and practitioners in choosing the best VO method, different benchmark studies have been published. However, the majority of them compare only a small subset of the most popular approaches and, usually, on specific data sets or configurations. In contrast, in this work, we aim to provide a complete and thorough study of the most popular and best‐performing geometric and data‐driven solutions for VO. In our investigation, we considered several scenarios and environments, comparing the estimation accuracies and the role of the hyper‐parameters of the approaches selected, and analyzing the computational resources they require. Experiments and tests are performed on different data sets (both publicly available and self‐collected) and two different computational boards. The experimental results show pros and cons of the tested approaches under different perspectives. The geometric simultaneous localization and mapping methods are confirmed to be the best performing, while data‐driven approaches show robustness with respect to nonideal conditions present in more challenging scenarios.

Publisher

Wiley

Subject

Computer Science Applications,Control and Systems Engineering

Cited by 2 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. Vision-Based Topological Localization for MAVs;IEEE Robotics and Automation Letters;2024-02

2. ARD‐VO: Agricultural robot data set of vineyards and olive groves;Journal of Field Robotics;2023-04-24

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