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Multi-view pairwise relationship learning for sketch based 3D shape retrieval

机译:基于草图的3D形状检索的多视图成对关系学习

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Recent progress in sketch-based 3D shape retrieval creates a novel and user-friendly way to explore massive 3D shapes on the Internet. However, current methods on this topic rely on designing invariant features for both sketches and 3D shapes, or complex matching strategies. Therefore, they suffer from problems like arbitrary drawings and inconsistent viewpoints. To tackle this problem, we propose a probabilistic framework based on Multi-View Pairwise Relationship (MVPR) learning. Our framework includes multiple views of 3D shapes as the intermediate layer between sketches and 3D shapes, and transforms the original retrieval problem into the form of inferring pairwise relationship between sketches and views. We accomplish pairwise relationship inference by a novel MVPR net, which can automatically predict and merge the pairwise relationships between a sketch and multiple views, thus freeing us from exhaustively selecting the best view of 3D shapes. We also propose to learn robust features for sketches and views via fine-tuning pre-trained networks. Extensive experiments on a large dataset demonstrate that the proposed method can outperform state-of-the-art methods significantly.
机译:基于草图的3D形状检索的最新进展创造了一种新颖且用户友好的方式,可以在Internet上探索大型3D形状。但是,当前关于此主题的方法依赖于为草图和3D形状设计不变特征,或依靠复杂的匹配策略。因此,它们遭受诸如任意附图和观点不一致之类的问题的困扰。为了解决这个问题,我们提出了一种基于多视图成对关系(MVPR)学习的概率框架。我们的框架包括3D形状的多个视图作为草图和3D形状之间的中间层,并将原始检索问题转换为推断草图和视图之间的成对关系的形式。我们通过新颖的MVPR网络完成了成对关系推断,该网络可以自动预测并合并草图和多个视图之间的成对关系,从而使我们免于详尽选择3D形状的最佳视图。我们还建议通过微调预训练的网络来学习草图和视图的强大功能。在大型数据集上进行的大量实验表明,该方法可以明显优于最新方法。

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