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The Feature Detection on the Homogeneous Surfaces with Projected Pattern

机译:投影图案在均匀表面上的特征检测

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In this article we deal with one of the fundamental problems in the area of the 3D reconstruction for objects with homogeneous surface such as, inter alia, human body or sculptures. The interest point detection on typical photos with many differing elements and changing intensities is already well-solved issue. Considerable difficulty and novelty is the interest point detection for homogeneous surfaces. To reconstruct such surfaces from images we have to artificially produce as many elements on surface as needed to allow proceed with the 3D coordinate's extraction process with desired density. Four methods were selected. The first, definitely the best documented was the Harris corner detector. Next was the Nobel's version of auto-correlation, the other was the minimum eigenvalue method known as the Kanade-Tomasi algorithm and the last tested method was the fast radial feature detector known as the Loy-Zelinsky algorithm. Chosen methods are well-known on the 3D reconstruction theatre, well implemented and documented, efficient in the terms of computational complexity. Also some image enhancements were utilized before feature extraction to improve the detection process. It was shown that the best choice was the Nobel's version of auto-correlation function and a very interesting candidate for further research is the Loy-Zelinsky method.
机译:在本文中,我们针对具有均匀表面的物体(例如人体或雕塑)处理3D重建领域中的一个基本问题。在具有许多不同元素和变化强度的典型照片上进行兴趣点检测已经是一个很好解决的问题。均匀表面的兴趣点检测是相当困难和新颖的。为了从图像重建此类表面,我们必须在表面上人工生成所需数量的元素,以允许以所需的密度进行3D坐标的提取过程。选择了四种方法。首先,绝对有据可查的是哈里斯拐角探测器。接下来是Nobel版本的自相关,另一个是最小特征值方法(称为Kanade-Tomasi算法),最后一个测试的方法是快速径向特征检测器(称为Loy-Zelinsky算法)。选择的方法在3D重建剧院中是众所周知的,并且在计算复杂度方面很有效地实施和记录在案。在特征提取之前还利用了一些图像增强功能来改善检测过程。结果表明,最佳选择是诺贝尔版本的自相关函数,Loy-Zelinsky方法是进行进一步研究的一个非常有趣的候选者。

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