首页> 外文会议>European Conference on Computer Vision(ECCV 2006) pt.2; 20060507-13; Graz(AT) >Exploiting Model Similarity for Indexing and Matching to a Large Model Database
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Exploiting Model Similarity for Indexing and Matching to a Large Model Database

机译:利用模型相似性为大型模型数据库建立索引和匹配

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This paper proposes a novel method to exploit model similarity in model-based 3D object recognition. The scenario consists of a large 3D model database of vehicles, and rapid indexing and matching needs to be done without sequential model alignment. In this scenario, the competition amongst shape features from similar models may pose serious challenge to recognition. To solve the problem, we propose to use a metric to quantitatively measure model similarities. For each model, we use similarity measures to define a model-centric class (MCC), which contains a group of similar models and the pose transformations between the model and its class members. Similarity information embedded in a MCC is used to boost matching hypotheses generation so that the correct model gains more opportunities to be hypothesized and identified. The algorithm is implemented and extensively tested on 1100 real LADAR scans of vehicles with a model database containing over 360 models.
机译:本文提出了一种在基于模型的3D对象识别中利用模型相似性的新方法。该方案包含一个大型的车辆3D模型数据库,并且需要快速索引和匹配,而无需进行顺序模型对齐。在这种情况下,来自相似模型的形状特征之间的竞争可能会给识别带来严峻挑战。为了解决该问题,我们建议使用一种度量标准来定量测量模型相似性。对于每个模型,我们使用相似性度量来定义以模型为中心的类(MCC),该类包含一组相似的模型以及模型与其类成员之间的姿势转换。 MCC中嵌入的相似性信息用于增强匹配假设的生成,以便正确的模型获得更多的假设和识别机会。该算法在包含360多个模型的模型数据库的车辆的1100次真实LADAR扫描中实施并进行了广泛测试。

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