Xuhui Zhao, Zhi Gao, Hao Li, Hong Ji, Hong Yang, Chenyang Li, Hao Fang, Ben M. Chen
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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. 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引用次数: 0
摘要
尽管视觉和机器人学界的 SLAM 研究前景广阔,从根本上维护了智能无人系统的自主性,但视觉挑战仍严重威胁着其稳健运行。现有的 SLAM 方法通常侧重于特定的挑战,并通过复杂的增强或多模态融合来解决问题。然而,这些方法基本上局限于特定场景,对挑战的理解和认识不够定量,导致性能大幅下降,泛化能力差,(或)计算冗余,机制不灵活。为了推动视觉 SLAM 的前沿发展,我们提出了一个完全可计算的可靠评估模块,称为 CEMS(Challenge Evaluation Module for SLAM),用于基于明确定义和系统分析的一般视觉感知。它将各种挑战分解为几个共同方面,并用相应的指标评估退化情况。广泛的实验证明了我们的可行性和优越性能。所提出的模块与标注地面实况的一致性高达 88.298%,与 SLAM 跟踪性能的相关性高达 0.879。此外,我们还展示了性能更佳的基于 CEMS 的 SLAM 原型,以及第一份针对常见 SLAM 数据集(EuRoC、KITTI 等)的全面 CET(挑战评估表),其中对各种挑战进行了客观公正的评估。我们将在自己的网站上提供该表,以造福社区。
How Challenging is a Challenge? CEMS: a Challenge Evaluation Module for SLAM Visual Perception
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.
期刊介绍:
The Journal of Intelligent and Robotic Systems bridges the gap between theory and practice in all areas of intelligent systems and robotics. It publishes original, peer reviewed contributions from initial concept and theory to prototyping to final product development and commercialization.
On the theoretical side, the journal features papers focusing on intelligent systems engineering, distributed intelligence systems, multi-level systems, intelligent control, multi-robot systems, cooperation and coordination of unmanned vehicle systems, etc.
On the application side, the journal emphasizes autonomous systems, industrial robotic systems, multi-robot systems, aerial vehicles, mobile robot platforms, underwater robots, sensors, sensor-fusion, and sensor-based control. Readers will also find papers on real applications of intelligent and robotic systems (e.g., mechatronics, manufacturing, biomedical, underwater, humanoid, mobile/legged robot and space applications, etc.).