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Scale and orientation invariant 3D interest point extraction using HK curvatures

机译:使用HK曲率提取尺度和方向不变的3D兴趣点

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Although they are orientation invariant, mean (H) and Gaussian (K) curvature values are essentially variant under scale and resolution changes. In order to overcome this fact, in this study, scale-spaces of the 3D surface and the curvature values are constructed. Then features with their scale information are sought within the scale-space. Thus, different from previous studies, H and K curvature values are obtained using constant threshold values and independent of the scale of the 3D surface. Also, 3D features are extracted with their sizes over the surface. Consequently, salient features extracted from a 3D surface are comparable to their identical but resized versions found on the scaled versions of the same 3D surface. In other words, metric sizes for each feature found over the surface are given and by this way complete scale and resolution invariance is assured. Moreover, robustness of feature extraction under scale and noise is tested. Also, the method is used for object recognition when a database is constructed by virtually resizing the Stuttgart database objects. The results are compared with the ones obtained when scale space is not used.
机译:尽管它们的方向不变,但平均值(H)和高斯(K)曲率值在比例和分辨率变化下基本上是不同的。为了克服这一事实,在本研究中,构建了3D表面的比例空间和曲率值。然后在比例空间内寻找具有比例信息的要素。因此,与以前的研究不同,使用恒定阈值获得H和K曲率值,并且与3D表面的比例无关。此外,还将提取3D要素及其在整个表面上的大小。因此,从3D曲面提取的显着特征与其在相同3D曲面的缩放版本中发现的相同但经过调整大小的版本相当。换句话说,给出了在表面上发现的每个特征的度量大小,从而确保了完整的比例和分辨率不变性。此外,测试了在比例和噪声下特征提取的鲁棒性。同样,当通过虚拟调整斯图加特数据库对象的大小来构建数据库时,该方法也可用于对象识别。将结果与不使用比例空间时获得的结果进行比较。

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