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Scalable 3D shape retrieval using local features and the signature quadratic form distance

机译:使用局部特征和签名二次形距离的可扩展3D形状检索

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摘要

We present a scalable and unsupervised approach for content-based retrieval on 3D model collections. Our goal is to represent a 3D shape as a set of discriminative local features, which is important to maintain robustness against deformations such as non-rigid transformations and partial data. However, this representation brings up the problem on how to compare two 3D models represented by feature sets. For solving this problem, we apply the signature quadratic form distance (SQFD), which is suitable for comparing feature sets. Using SQFD, the matching between two 3D objects involves only their representations, so it is easy to add new models to the collection. A key characteristic of the feature signatures, required by the SQFD, is that the final object representation can be easily obtained in a unsupervised manner. Additionally, as the SQFD is an expensive distance function, to make the system scalable we present a novel technique to reduce the amount of features by detecting clusters of key points on a 3D model. Thus, with smaller feature sets, the distance calculation is more efficient. Our experiments on a large-scale dataset show that our proposed matching algorithm not only performs efficiently, but also its effectiveness is better than state-of-the-art matching algorithms for 3D models.
机译:我们为3D模型集合的基于内容的检索提供了一种可扩展且不受监督的方法。我们的目标是将3D形状表示为一组可区分的局部特征,这对于保持抗变形能力(例如非刚性变换和部分数据)非常重要。但是,这种表示提出了有关如何比较要素集表示的两个3D模型的问题。为了解决此问题,我们应用了签名二次形距离(SQFD),它适合于比较特征集。使用SQFD,两个3D对象之间的匹配仅涉及它们的表示,因此可以轻松地向集合中添加新模型。 SQFD要求的特征签名的关键特征是,可以以无监督的方式轻松获得最终的对象表示。此外,由于SQFD是昂贵的距离函数,因此为了使系统具有可伸缩性,我们提出了一种新颖的技术,可通过检测3D模型上关键点的群集来减少特征量。因此,使用较小的特征集,距离计算效率更高。我们在大型数据集上进行的实验表明,我们提出的匹配算法不仅性能高效,而且其效果也优于3D模型的最新匹配算法。

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