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UMONS-TAICHI: A multimodal motion capture dataset of expertise in Taijiquan gestures

机译:UMONS-TAICHI:太极拳手势专业知识的多模式运动捕捉数据集

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摘要

In this article, we present a large 3D motion capture dataset of Taijiquan martial art gestures (n = 2200 samples) that includes 13 classes (relative to Taijiquan techniques) executed by 12 participants of various skill levels. Participants levels were ranked by three experts on a scale of [0–10]. The dataset was captured using two motion capture systems simultaneously: 1) Qualisys, a sophisticated optical motion capture system of 11 cameras that tracks 68 retroreflective markers at 179 Hz, and 2) Microsoft Kinect V2, a low-cost markerless time-of-flight depth sensor that tracks 25 locations of a person׳s skeleton at 30 Hz. Data from both systems were synchronized manually. Qualisys data were manually corrected, and then processed to complete any missing data. Data were also manually annotated for segmentation. Both segmented and unsegmented data are provided in this dataset. This article details the recording protocol as well as the processing and annotation procedures. The data were initially recorded for gesture recognition and skill evaluation, but they are also suited for research on synthesis, segmentation, multi-sensor data comparison and fusion, sports science or more general research on human science or motion capture. A preliminary analysis has been conducted by Tits et al. (2017) [1] on a part of the dataset to extract morphology-independent motion features for skill evaluation. Results of this analysis are presented in their communication: “Morphology Independent Feature Engineering in Motion Capture Database for Gesture Evaluation” () . Data are available for research purpose (license CC BY-NC-SA 4.0), at .
机译:在本文中,我们介绍了太极拳武术手势的大型3D运动捕获数据集(n = 2200个样本),其中包括由12个不同技能水平的参与者执行的13类(相对于太极拳技术)。参加者的级别由三位专家以[0-10]的等级进行排名。使用两个运动捕获系统同时捕获数据集:1)Qualisys,这是一个复杂的光学运动捕获系统,由11个相机组成,可跟踪179 Hz处的68个反光标记,以及2)Microsoft Kinect V2,一种低成本的无标记飞行时间深度传感器,以30 Hz的频率跟踪人体骨骼的25个位置。来自两个系统的数据都是手动同步的。手动校正了Qualisys数据,然后进行处理以完成所有丢失的数据。还手动注释了数据以进行细分。此数据集中同时提供了分段数据和未分段数据。本文详细介绍了记录协议以及处理和注释过程。最初记录的数据用于手势识别和技能评估,但它们也适合于合成,分割,多传感器数据比较和融合,体育科学或更广泛的人类科学或运动捕捉研究。 Tits等人进行了初步分析。 (2017)[1]在数据集的一部分上提取与形态无关的运动特征以进行技能评估。该分析的结果显示在其通讯中:“运动捕获数据库中的形态独立特征工程,用于手势评估”()。数据可用于研究目的(许可证CC BY-NC-SA 4.0),网址为。

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