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A fast spin images matching method for 3D object recognition

机译:用于3D目标识别的快速旋转图像匹配方法

摘要

Spin image has been applied to 3D object recognition system successfully because of its advantages of rotation, translation and view invariant. However, this method is very time consuming, owning to its high-dimensional characteristics and its complicated matching procedure. To reduce the recognition time, in this paper we propose a coarse-to-fine matching strategy for spin images. There are two steps to follow. Firstly, a low dimensional feature is introduced for a given point. The feature contain two components, its first component is the perpendicular distance from the centroid of the given point’s neighbor region to the tangential plane of the given point, its second component is the maximum distance between the projection point of the centroid on the tangential plane and projection points of the neighbor region on the tangential plane. Secondly when comparing a point from a target with a point from a model, their low features are matched first, only if they satisfy the low feature constrains, can they be selected as a candidate point pair and their spin images are further matched by similarity measurement. When all the target points and all the model points finish above matching process, those candidate point pairs with high spin image similarity are selected as corresponding point pairs, and the target can be recognized as the model with the most amount of corresponding point pairs. Experiment based on Stanford 3D models is conducted, and the comparison of experiment results of our method with the standard spin image shows that the propose method is more efficient while still maintain the standard spin image’s advantages. © (2013) COPYRIGHT Society of Photo-Optical Instrumentation Engineers (SPIE). Downloading of the abstract is permitted for personal use only.
机译:自旋图像具有旋转,平移和视场不变的优点,已成功应用于3D对象识别系统。但是,这种方法由于其高维特性和复杂的匹配过程而非常耗时。为了减少识别时间,本文提出了一种自旋图像的粗细匹配策略。有两个步骤。首先,针对给定点引入低维特征。要素包含两个分量,其第一个分量是从给定点的相邻区域的质心到给定点的切平面的垂直距离,其第二个分量是质心在切平面上的投影点与该点之间的最大距离。切线平面上相邻区域的投影点。其次,在将目标的点与模型的点进行比较时,首先匹配它们的低特征,只有它们满足低特征约束,才可以选择它们作为候选点对,并通过相似度测量进一步匹配它们的自旋图像。当所有目标点和所有模型点均完成上述匹配过程后,选择那些自旋图像相似度高的候选点对作为对应点对,即可将目标识别为对应点对数最多的模型。进行了基于斯坦福3D模型的实验,将我们的方法与标准旋转图像的实验结果进行比较,结果表明,该方法在保持标准旋转图像优势的同时,效率更高。 ©(2013)版权所有,光电仪器工程师协会(SPIE)。摘要的下载仅允许个人使用。

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