基于滑动窗口图优化的单目事件视觉惯性里程计

W. Guan, P. Lu
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引用次数: 6

摘要

事件相机是受生物启发的视觉传感器,它捕捉像素级照明变化,而不是以固定帧率捕捉强度图像。与标准相机相比,它们有很多优点,比如高动态范围、高时间分辨率(低延迟)、无运动模糊等。因此,开发基于事件相机的状态估计算法为自主系统和机器人提供了令人兴奋的机会。在本文中,我们提出了基于事件角点特征检测和匹配的单目视觉惯性里程计,并设计了良好的特征管理。更具体地说,设计了两种不同的基于时间面的事件表示,实现了事件角点特征跟踪(用于前端增量估计)和匹配(用于闭环检测)。在原始事件流的基础上,利用提出的事件表示设置检测事件角点特征的掩码,保证了事件角点特征的均匀分布和空间一致性。最后,设计了一个紧密耦合的基于图的优化框架,通过融合预集成IMU测量和事件角点观测来获得高精度的状态估计。我们定量验证了我们的系统在不同分辨率事件相机上的性能:DAVIS240C(240*180,公共数据集,达到最先进的水平),DAVIS346(346*240,真实测试),DVXplorer(640*480真实测试)。此外,我们定性地证明了我们的框架在不同大规模数据集上的准确性、鲁棒性、闭环性和重新定位性能,并使用我们的事件视觉惯性里程计(EVIO)框架进行自主四旋翼飞行。所有评估的视频都出现在项目网站上。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Monocular Event Visual Inertial Odometry based on Event-corner using Sliding Windows Graph-based Optimization
Event cameras are biologically-inspired vision sensors that capture pixel-level illumination changes instead of the intensity image at a fixed frame rate. They offer many advantages over the standard cameras, such as high dynamic range, high temporal resolution (low latency), no motion blur, etc. Therefore, developing state estimation algorithms based on event cameras offers exciting opportunities for autonomous systems and robots. In this paper, we propose monocular visual-inertial odometry for event cameras based on event-corner feature detection and matching with well-designed feature management. More specifically, two different kinds of event representations based on time surface are designed to realize event-corner feature tracking (for front-end incremental estimation) and matching (for loop closure detection). Furthermore, the proposed event representations are used to set mask for detecting the event-corner feature based on the raw event-stream, which ensures the uniformly distributed and spatial consistency characteristic of the event-corner feature. Finally, a tightly coupled, graph-based optimization framework is designed to obtain high-accurate state estimation through fusing pre-integrated IMU measurements and event-corner observations. We validate quantitatively the performance of our system on different resolution event cameras: DAVIS240C (240*180, public dataset, achieve state-of-the-art), DAVIS346 (346*240, real-test), DVXplorer (640*480 real-test). Furthermore, we demonstrate qualitatively the accuracy, robustness, loop closure, and re-localization performance of our framework on different large-scale datasets, and an autonomous quadrotor flight using our Event Visual-inertial Odometry (EVIO) framework. Videos of all the evaluations are presented on the project website.
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