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Fast Local and Global Similarity Searches in Large Motion Capture Databases

机译:大型运动捕获数据库中的快速本地和全局相似性搜索

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Fast searching of content in large motion databases is essential for efficient motion analysis and synthesis. In this work we demonstrate that identifying locally similar regions in human motion data can be practical even for huge databases, if medium-dimensional (15-90 dimensional) feature sets are used for kd-tree-based nearest-neighbor-searches. On the basis of kd-tree-based local neighborhood searches we devise a novel fast method for global similarity searches. We show that knn-searches can be used efficiently within the problems of (a) "numerical and logical similarity searches", (b) reconstruction of motions from sparse marker sets, and (c) building so called "fat graphs", tasks for which previously algorithms with preprocessing time quadratic in the size of the database and thus only applicable to small collections of motions had been presented. We test our techniques on the two largest freely available motion capture databases, the CMU and HDM05 motion databases comprising more than 750 min of motion capture data proving that our approach is not only theoretically applicable but also solves the problem of fast similarity searches in huge motion databases in practice.
机译:大型运动数据库中的快速搜索内容对于有效的运动分析和合成至关重要。在这项工作中,我们证明识别人类运动数据中的当地类似地区即使对于大型数据库也可以是实际的,如果中型(15-90维)特征集用于基于KD-Tree的最近邻的搜索。在基于KD-Tree的本地社区搜索的基础上,我们设计了一种用于全球相似性搜索的新型快速方法。我们表明,KNN搜索可以有效地在(a)“数值和逻辑相似度搜索”的问题内,(b)从稀疏标记集的动作重建,(c)建筑物所谓的“脂肪图”,任务先前在数据库的大小中具有预处理时间Quadration的算法,因此仅介绍了仅适用于小型运动的小集合。我们在两个最大可自由的运动捕获数据库中测试我们的技术,CMU和HDM05运动数据库包括超过750分钟的运动捕捉数据,证明我们的方法不仅是理论上适用的,而且还解决了巨大运动中快速相似性的问题数据库在实践中。

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