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3D Object Classification Using Scale Invariant Heat Kernels with Collaborative Classification

机译:使用尺度不变热核进行协作分类的3D对象分类

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One of the major goals of computer vision is the development of flexible and efficient methods for shape representation. This paper proposes an approach for shape matching and retrieval based on scale-invariant heat kernel (HK). The approach uses a novel descriptor based on the histograms of the scale-invariant HK for a number of critical points on the shape at different time scales. We propose an improved method to introduce scale-invariance of HK to avoid noise-sensitive operations in the original method. A collaborative classification (CC) scheme is then employed for object classification. For comparison we compare our approach to well-known approaches on a standard benchmark dataset: the SHREC 2011. The results have indeed confirmed the high performance of the proposed approach on the shape retrieval problem.
机译:计算机视觉的主要目标之一是开发灵活有效的形状表示方法。提出了一种基于尺度不变热核(HK)的形状匹配与检索方法。该方法基于形状不变的HK的直方图,使用新颖的描述符来描述形状在不同时间尺度上的多个关键点。我们提出一种改进的方法来引入HK的尺度不变性,以避免在原始方法中产生噪声敏感的操作。然后将协作分类(CC)方案用于对象分类。为了进行比较,我们将我们的方法与标准基准数据集上的著名方法(SHREC 2011)进行了比较。结果确实证实了所提出的方法在形状检索问题上的高性能。

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