非刚性形状检索的热核:稀疏表示和高效分类

M. Abdelrahman, M. El-Melegy, A. Farag
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引用次数: 15

摘要

计算机视觉和机器智能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稀疏表示的形状检索方法。我们使用拉普拉斯-贝尔特拉米特征函数来检测形状表面上的少量临界点。然后结合Lap lace-Beltrami算子的归一化特征值,根据检测到的不同尺度临界点处的热核形成形状描述子。稀疏表示用于降低计算描述符的维数。该描述符通过基于正则化最小二乘算法的协同表示分类进行分类。我们将我们的方法与两种众所周知的方法在两个不同的数据集上进行了比较:非刚性世界数据集和SHREC 2011。实验结果证实了该方法的有效性,同时降低了形状检索问题的时间复杂度和空间复杂度。
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Heat Kernels for Non-Rigid Shape Retrieval: Sparse Representation and Efficient Classification
One of the major goals of computer vision and machine intelligence is the development of flexible and efficient methods for shape representation. This paper presents an approach for shape retrieval based on sparse representation of scale-invariant heat kernel. We use the Laplace-Beltrami eigen functions to detect a small number of critical points on the shape surface. Then a shape descriptor is formed based on the heat kernels at the detected critical points for different scales, combined with the normalized eigen values of the Lap lace-Beltrami operator. Sparse representation is used to reduce the dimensionality of the calculated descriptor. The proposed descriptor is used for classification via the collaborative representation-based classification with regularized least square algorithm. We compare our approach to two well-known approaches on two different data sets: the nonrigid world data set and the SHREC 2011. The results have indeed confirmed the improved performance of the proposed approach, yet reducing the time and space complicity of the shape retrieval problem.
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