How Challenging is a Challenge? CEMS: a Challenge Evaluation Module for SLAM Visual Perception

被引:0
作者
Xuhui Zhao
Zhi Gao
Hao Li
Hong Ji
Hong Yang
Chenyang Li
Hao Fang
Ben M. Chen
机构
[1] Wuhan University,School of Remote Sensing and Information Engineering
[2] Chinese Academy of Sciences,Aerospace Information Research Institute
[3] Beijing Institute of Technology,School of Automation
[4] Chinese University of Hong Kong,Department of Mechanical and Automation Engineering
来源
Journal of Intelligent & Robotic Systems | 2024年 / 110卷
关键词
Robotics; Resilient SLAM; Visual degradation; Challenge evaluation;
D O I
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中图分类号
学科分类号
摘要
Despite promising SLAM research in both vision and robotics communities, which fundamentally sustains the autonomy of intelligent unmanned systems, visual challenges still threaten its robust operation severely. Existing SLAM methods usually focus on specific challenges and solve the problem with sophisticated enhancement or multi-modal fusion. However, they are basically limited to particular scenes with a non-quantitative understanding and awareness of challenges, resulting in a significant performance decline with poor generalization and(or) redundant computation with inflexible mechanisms. To push the frontier of visual SLAM, we propose a fully computational reliable evaluation module called CEMS (Challenge Evaluation Module for SLAM) for general visual perception based on a clear definition and systematic analysis. It decomposes various challenges into several common aspects and evaluates degradation with corresponding indicators. Extensive experiments demonstrate our feasibility and outperformance. The proposed module has a high consistency of 88.298% compared with annotation ground truth, and a strong correlation of 0.879 compared with SLAM tracking performance. Moreover, we show the prototype SLAM based on CEMS with better performance and the first comprehensive CET (Challenge Evaluation Table) for common SLAM datasets (EuRoC, KITTI, etc.) with objective and fair evaluations of various challenges. We make it available online to benefit the community on our website.
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