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On Exploiting Per-Pixel Motion Conflicts to Extract Secondary Motions

机译:利用每像素运动冲突提取次要运动

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Ubiquitous Augmented Reality requires robust localization in complex daily environments. The combination of camera and Inertial Mersurement Unit (IMU) has shown promising results for robust localization due to the complementary characteristics of the visual and inertial modalities. However, there exists many cases where the measurements from visual and inertial modalities do not provide a single consistent motion estimate thus causing disagreement on the estimated motion. Limited literature has addressed this problem associated with sensor fusion for localization. Since the disagreement is not a result of measurement noises, existing outlier rejection techniques are not suitable to address this problem. In this paper, we propose a novel approach to handle the disagreement as motion conflict with two key components. The first one is a generalized Hidden Markov Model (HMM) that formulates the tracking and management of the primary motion and the secondary motion as a single estimation problem. The second component is an epipolar constrained Deep Neural Network that generates a per-pixel motion conflict probability map. Experimental evaluations demonstrate significant improvement to the tracking accuracy in cases of strong motion conflict compared to previous state-of-the-art algorithms for localization. Moreover, as a consequence of motion tracking on the secondary maps, our solution enables augmentation of virtual content attached to secondary motions, which brings us one step closer to Ubiquitous Augmented Reality.
机译:无处不在的增强现实要求在复杂的日常环境中进行可靠的本地化。由于视觉和惯性模态的互补特性,相机和惯性测量单元(IMU)的结合对于稳固的定位已显示出令人鼓舞的结果。但是,在许多情况下,根据视觉和惯性模态进行的测量未提供单个一致的运动估计,因此导致对估计的运动存在分歧。有限的文献已经解决了与传感器融合用于定位相关的问题。由于不一致不是测量噪声的结果,因此现有的异常值排除技术不适合解决此问题。在本文中,我们提出了一种新颖的方法来处理运动冲突与两个关键组成部分之间的分歧。第一个是广义隐马尔可夫模型(HMM),它将主运动和次运动的跟踪和管理公式化为单个估计问题。第二个组件是对极约束的深度神经网络,它会生成每个像素的运动冲突概率图。实验评估表明,与以前的最新定位算法相比,在剧烈运动冲突的情况下,跟踪精度有了显着提高。此外,由于在次要地图上进行了运动跟踪,因此我们的解决方案能够增强附加到次要运动的虚拟内容,这使我们更接近普适性增强现实。

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