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LeSSS: Learned Shared Semantic Spaces for Relating Multi-Modal Representations of 3D Shapes

机译:LeSSS:用于关联3D形状的多模态表示的学习共享语义空间

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摘要

In this paper, we propose a new method for structuring multi-modal representations of shapes according to semantic relations. We learn a metric that links semantically similar objects represented in different modalities. First, 3D-shapes are associated with textual labels by learning how textual attributes are related to the observed geometry. Correlations between similar labels are captured by simultaneously embedding labels and shape descriptors into a common latent space in which an inner product corresponds to similarity. The mapping is learned robustly by optimizing a rank-based loss function under a sparseness prior for the spectrum of the matrix of all classifiers. Second, we extend this framework towards relating multi-modal representations of the geometric objects. The key idea is that weak cues from shared human labels are sufficient to obtain a consistent embedding of related objects even though their representations are not directly comparable. We evaluate our method against common base-line approaches, investigate the influence of different geometric descriptors, and demonstrate a prototypical multi-modal browser that relates 3D-objects with text, photographs, and 2D line sketches.
机译:在本文中,我们提出了一种根据语义关系构造形状的多峰表示的新方法。我们学习了一种度量,该度量链接了以不同方式表示的语义相似的对象。首先,通过学习文本属性与观察到的几何图形之间的关系,将3D形状与文本标签相关联。通过将标签和形状描述符同时嵌入到共同的潜在空间中,可以捕获相似标记之间的相关性,在该潜在空间中,内积对应于相似性。通过在所有分类器矩阵频谱的稀疏度之前优化基于秩的损失函数,可以稳健地学习映射。其次,我们将这个框架扩展为涉及几何对象的多峰表示。关键思想是,即使它们的表示不能直接比较,来自共享人类标签的弱提示也足以获得相关对象的一致嵌入。我们针对常见的基线方法评估了我们的方法,调查了不同几何描述符的影响,并演示了一种原型多模式浏览器,该浏览器将3D对象与文本,照片和2D线草图相关联。

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