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Performance Evaluation of 3D Local Feature Descriptors

机译:3D局部特征描述符的性能评估

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A number of 3D local feature descriptors have been proposed in literature. It is however, unclear which descriptors are more appropriate for a particular application. This paper compares nine popular local descriptors in the context of 3D shape retrieval, 3D object recognition, and 3D modeling. We first evaluate these descriptors on six popular datasets in terms of descriptiveness. We then test their robustness with respect to support radius, Gaussian noise, shot noise, varying mesh resolution, image boundary, and keypoint localization errors. Our extensive tests show that Tri-Spin-Images (TriSI) has the best overall performance across all datasets. Unique Shape Context (USC), Rotational Projection Statistics (RoPS), 3D Shape Context (3DSC), and Signature of Histograms of OrienTations (SHOT) also achieved overall acceptable results.
机译:在文献中已经提出了许多3D局部特征描述符。但是,不清楚哪些描述符更适合特定的应用程序。本文在3D形状检索,3D对象识别和3D建模方面比较了9种流行的局部描述符。我们首先根据描述性在六个流行的数据集上评估这些描述符。然后,我们针对支撑半径,高斯噪声,散粒噪声,变化的网格分辨率,图像边界和关键点定位误差来测试它们的鲁棒性。我们广泛的测试表明,Tri-Spin-Images(TriSI)在所有数据集中均具有最佳的整体性能。唯一形状上下文(USC),旋转投影统计(RoPS),3D形状上下文(3DSC)和方向直方图签名(SHOT)也获得了总体可接受的结果。

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