多运动视觉里程测量

Kevin M. Judd, Jonathan D. Gammell
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摘要

视觉运动估算是自主导航中的一项挑战。最近的工作重点是解决高动态环境中的多运动估计问题。这些环境不仅包含多种复杂运动,而且往往会出现严重遮挡。同时估计第三方运动和传感器自我运动非常困难,因为观察到的物体运动包括物体的真实运动和传感器运动。以往大多数多运动估计方法都是通过基于外观的物体检测或特定应用的运动约束来简化这一问题。这些方法在特定应用和环境中很有效,但不能很好地推广到完整的多运动估计问题(MEP)中。本文介绍了多运动视觉轨迹测量法(MVO),这是一种多运动估算管道,可估算场景中每个运动的完整 SE(3) 轨迹,包括传感器的自我运动,而无需依赖基于外观的信息。MVO 利用多运动分割和跟踪技术扩展了传统的视觉里程计 (VO) 管道。它使用基于物理的运动先验来推断暂时闭塞的运动,并通过运动闭合来识别运动的再次出现。在牛津多运动数据集(OMD)和 KITTI 视觉基准套件的真实世界数据上进行的评估表明,与类似方法相比,MVO 实现了良好的估计精度,适用于各种多运动估计挑战。
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Multimotion visual odometry
Visual motion estimation is a well-studied challenge in autonomous navigation. Recent work has focused on addressing multimotion estimation in highly dynamic environments. These environments not only comprise multiple, complex motions but also tend to exhibit significant occlusion. Estimating third-party motions simultaneously with the sensor egomotion is difficult because an object’s observed motion consists of both its true motion and the sensor motion. Most previous works in multimotion estimation simplify this problem by relying on appearance-based object detection or application-specific motion constraints. These approaches are effective in specific applications and environments but do not generalize well to the full multimotion estimation problem (MEP). This paper presents Multimotion Visual Odometry (MVO), a multimotion estimation pipeline that estimates the full SE(3) trajectory of every motion in the scene, including the sensor egomotion, without relying on appearance-based information. MVO extends the traditional visual odometry (VO) pipeline with multimotion segmentation and tracking techniques. It uses physically founded motion priors to extrapolate motions through temporary occlusions and identify the reappearance of motions through motion closure. Evaluations on real-world data from the Oxford Multimotion Dataset (OMD) and the KITTI Vision Benchmark Suite demonstrate that MVO achieves good estimation accuracy compared to similar approaches and is applicable to a variety of multimotion estimation challenges.
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