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Optimal Local Searching for Fast and Robust Textureless 3D Object Tracking in Highly Cluttered Backgrounds

机译:在高度混乱的背景中进行快速,鲁棒的无纹理3D对象跟踪的最佳本地搜索

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摘要

Edge-based tracking is a fast and plausible approach for textureless 3D object tracking, but its robustness is still very challenging in highly cluttered backgrounds due to numerous local minima. To overcome this problem, we propose a novel method for fast and robust textureless 3D object tracking in highly cluttered backgrounds. The proposed method is based on optimal local searching of 3D-2D correspondences between a known 3D object model and 2D scene edges in an image with heavy background clutter. In our searching scheme, searching regions are partitioned into three levels (interior, contour, and exterior) with respect to the previous object region, and confident searching directions are determined by evaluating candidates of correspondences on their region levels; thus, the correspondences are searched among likely candidates in only the confident directions instead of searching through all candidates. To ensure the confident searching direction, we also adopt the region appearance, which is efficiently modeled on a newly defined local space (called a searching bundle). Experimental results and performance evaluations demonstrate that our method fully supports fast and robust textureless 3D object tracking even in highly cluttered backgrounds.
机译:基于边缘的跟踪是用于无纹理3D对象跟踪的一种快速而合理的方法,但是由于高度的局部最小值,在高度混乱的背景中其鲁棒性仍然非常具有挑战性。为了克服这个问题,我们提出了一种在高度混乱的背景下进行快速,鲁棒的无纹理3D对象跟踪的新颖方法。所提出的方法是基于对已知的3D对象模型和背景杂波严重的图像中的2D场景边缘之间的3D-2D对应关系进行最佳局部搜索。在我们的搜索方案中,将搜索区域相对于先前的对象区域划分为三个级别(内部,轮廓和外部),并通过评估区域级别上的对应候选来确定置信的搜索方向。因此,仅在可信方向上搜索可能的候选者之间的对应关系,而不是搜索所有候选者。为了确保确定搜索方向,我们还采用了区域外观,该区域外观是在新定义的局部空间(称为搜索束)上有效建模的。实验结果和性能评估表明,即使在高度混乱的背景下,我们的方法也完全支持快速且鲁棒的无纹理3D对象跟踪。

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