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Supervised Learning of Similarity Measures for Content-Based 3D Model Retrieval

机译:基于内容的3D模型检索的相似性测量学习

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In this paper we investigate on how the choice of similarity measures affects the performance of content-based 3D model retrieval (CB3DR) algorithms. In CB3DR, shape descriptors are used to provide a numerical representation of the salient features of the data, while similarity functions capture the high level semantic concepts. In the first part of the paper, we demonstrate experimentally that the Euclidean distance is not the optimal similarity function for 3D model classification and retrieval. Then, in the second part, we propose to use a supervised learning approach for automatic selection of the optimal similarity measure that achieves the best performance. Our experiments using the Princeton Shape Benchmark (PSB) show significant improvements in the retrieval performance.
机译:在本文中,我们研究了相似度测量的选择如何影响基于内容的3D模型检索(CB3DR)算法的性能。在CB3DR中,形状描述符用于提供数据的突出特征的数值表示,而相似性功能捕获高级语义概念。在本文的第一部分,我们通过实验展示了欧几里德距离不是3D模型分类和检索的最佳相似函数。然后,在第二部分中,我们建议使用监督的学习方法来自动选择实现最佳性能的最佳相似性度量。我们使用普林斯顿形状基准(PSB)的实验显示了检索性能的显着改善。

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