Similarity Search in 3D Human Motion Data

J. Sedmidubský, P. Zezula
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引用次数: 4

Abstract

Motion capture technologies can digitize human movements into a discrete sequence of 3D skeletons. Such spatio-temporal data have a great application potential in many fields, ranging from computer animation, through security and sports to medicine, but their computerized processing is a difficult problem. The objective of this tutorial is to explain fundamental principles and technologies designed for searching, subsequence matching, classification and action detection in the 3D human motion data. These operations inherently require the concept of similarity to determine the degree of accordance between pairs of 3D skeleton sequences. Such similarity can be modeled using a generic approach of metric space by extracting effective deep features and comparing them by efficient distance functions. The metric-space approach also enables applying traditional index structures to efficiently access large datasets of skeleton sequences. We demonstrate the functionality of selected motion-processing operations by interactive web applications.
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三维人体运动数据的相似度搜索
动作捕捉技术可以将人体运动数字化,形成一个离散的3D骨骼序列。这些时空数据在计算机动画、安全、体育、医学等许多领域都有很大的应用潜力,但它们的计算机化处理是一个难题。本教程的目的是解释在三维人体运动数据中搜索,子序列匹配,分类和动作检测的基本原理和技术。这些操作本质上需要相似性的概念来确定对三维骨架序列之间的一致程度。这种相似性可以使用度量空间的通用方法来建模,通过提取有效的深度特征并通过有效的距离函数进行比较。度量空间方法还允许应用传统的索引结构来有效地访问骨架序列的大型数据集。我们通过交互式web应用程序演示了选定的运动处理操作的功能。
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