基于用户反馈的三维模型语义标注与检索研究

Tianyang Lu, Shaobin Huang, Peng Wu, Yeran Jia
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引用次数: 1

摘要

三维模型检索作为多媒体检索的重要组成部分,其研究主要集中在基于形状的检索方法上。采用语义信息是提高检索性能的一种很有前途的方法。目前,对象的语义通常由几个关键字来表示。然而,获取每个3D模型的语义是非常困难和昂贵的。为了解决这一问题,本文提出了一种基于模型间语义关系的语义描述方法,并提出了一种基于噪声用户反馈的自动语义标注方法。本文首先分析了用户反馈所反映的语义关系。然后,将语义关系作为一个三维模型的语义属性,用于聚类检测语义组,称为语义社区。第三,在语义共同体的基础上,基于少量三维模型的语义关键字对模型的语义进行自动高效标注。最后,提出了一种具有长期语义学习能力的检索机制。在普林斯顿形状基准上进行的实验表明,该方法不仅在语义聚类和标注方面取得了良好的性能,而且在语义检索方面也取得了良好的性能。
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Researches on Semantic Annotation and Retrieval of 3D Models Based on User Feedback
As an important part of multimedia retrieval, researches on 3D model retrieval concentrate on the shape-based retrieval method. It is a promising way to improve retrieval performance by adopting semantic information. At present, semantics of an object is usually represented by several keywords. However, acquiring each 3D model's semantics is very difficult and expensive. To solve the problem, the paper proposes to describe a 3D model's semantics based on its relationship with the semantics of the others, and states an automatic semantic annotation based on noisy user feedbacks. The paper first analyzes the semantic relationship reflected by user feedbacks. Then, the semantic relationship is treated as one 3D model's semantic property and is adopted in clustering to detect semantic groups that is named as semantic community. Thirdly, based on the semantic community, the semantics for models is automatically and efficiently annotated based on semantic keywords of a few 3D models. Finally, a retrieval mechanism with long-term semantic learning ability is proposed. The experiments performed on Princeton Shape Benchmark show that the proposed method achieves good performance not only in semantic clustering and annotation but also in semantic retrieval.
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