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3D Textureless Object Detection and Tracking: An Edge-Based Approach

机译:3D Textulless对象检测和跟踪:基于边缘的方法

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This paper presents an approach to textureless object detection and tracking of the 3D pose. Our detection and tracking schemes are coherently integrated in a particle filtering framework on the special Euclidean group, SE(3), in which the visual tracking problem is tackled by maintaining multiple hypotheses of the object pose. For textureless object detection, an efficient chamfer matching is employed so that a set of coarse pose hypotheses is estimated from the matching between 2D edge templates of an object and a query image. Particles are then initialized from the coarse pose hypotheses by randomly drawing based on costs of the matching. To ensure the initialized particles are at or close to the global optimum, an annealing process is performed after the initialization. While a standard edge-based tracking is employed after the annealed initialization, we employ a refinement process to establish improved correspondences between projected edge points from the object model and edge points from an input image. Comparative results for several image sequences with clutter are shown to validate the effectiveness of our approach.
机译:本文提出了一种对3D姿势的Tearlifices对象检测和跟踪的方法。我们的检测和跟踪方案在特殊欧几里德组的粒子过滤框架中连贯地集成在SE(3)上,其中通过维持对象姿势的多个假设来解决视觉跟踪问题。对于Textulelifice对象检测,采用有效的倒角匹配,使得从对象的2D边缘模板和查询图像之间的匹配估计一组粗姿势假设。然后通过基于匹配的成本随机绘制从粗大的姿势假设初始化颗粒。为了确保初始化粒子处或接近全局最佳,在初始化之后进行退火处理。虽然在退火初始化之后采用了基于标准的边沿跟踪,但我们采用了一种改进过程,以在从对象模型和来自输入图像的边缘点之间建立投影边缘点之间的改进的对应关系。显示杂乱的几个图像序列的比较结果显示为验证我们方法的有效性。

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