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Shape analysis on the hypersphere of wavelet densities

机译:小波密度超球面的形状分析

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We present a novel method for shape analysis which represents shapes as probability density functions and then uses the intrinsic geometry of this space to match similar shapes. In our approach, shape densities are estimated by representing the square-root of the density in a wavelet basis. Under this model, each density (of a corresponding shape) is then mapped to a point on a unit hypersphere. For each category of shapes, we find the intrinsic Karcher mean of the class on the hyper-sphere of shape densities, and use the minimum spherical distance between a query shape and the means to classify shapes. Our method is adaptable to a variety of applications, does not require burdensome preprocessing like extracting closed curves, and experimental results demonstrate it to be competitive with contemporary shape matching algorithms.
机译:我们提出了一种用于形状分析的新颖方法,该方法将形状表示为概率密度函数,然后使用该空间的固有几何形状来匹配相似的形状。在我们的方法中,通过以小波为基础表示密度的平方根来估计形状密度。在此模型下,每个密度(具有对应形状)都将映射到单位超球面上的一个点。对于每种形状类别,我们在形状密度的超球面上找到该类的内在Karcher均值,并使用查询形状和对形状进行分类的方法之间的最小球面距离。我们的方法适用于各种应用,不需要繁琐的预处理,例如提取闭合曲线,实验结果表明,它与现代形状匹配算法相比具有竞争力。

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