Multitask learning for Laban movement analysis

Bernstein Ran, Shafir Tal, Tsachor Rachelle, Studd Karen, Schuster Assaf
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引用次数: 13

Abstract

This paper presents the results of a multitask learning method for recognition of Laban Movement Analysis (LMA) qualities from a markerless motion capture camera. LMA is a well-accepted method for describing, interpreting and documenting human movement which can be advantageous over kinematic description for capturing qualitative aspects as well as quantitative ones. Its specific language can be understood across disciplines. Thus, in recent years, LMA is increasingly becoming the preferred method for movement analysis. Many applications that use motion capture data might be significantly leveraged by automatic recognition of Laban Movement qualities. A data set of 550 video clips of different combinations of LMA qualities were recorded from markerless motion capture skeletal recordings demonstrated on the output of Microsoft's Kinect V2 sensor and on video. A sample of these clips were tagged by 2 Certified Movement Analysts as a multi-label training set to develop the Machine Learning (ML) algorithms. This approach obtained an improvement in recall and precision rate of about 60%--- 4% more than single-task machine learning previous approach by Bertstein et al. on single-task learning, was validated by analysis of non trained people moving general actions. Results show improved handling of noisy sensory data with an in-home setup, a method for automatic recognition of markerless movement in different situations, postures and tasks, and moderate improvements in quantification of subtle qualities for which a well defined quantification had previously not been found.
拉班动作分析的多任务学习
本文提出了一种多任务学习方法,用于无标记运动捕捉相机的拉班运动分析(LMA)质量识别。LMA是一种被广泛接受的描述、解释和记录人类运动的方法,在捕捉定性和定量方面,它比运动学描述更有利。它的特定语言可以跨学科理解。因此,近年来,LMA越来越成为运动分析的首选方法。许多使用动作捕捉数据的应用程序可能会通过自动识别Laban运动质量来显著利用。从微软Kinect V2传感器输出和视频中展示的无标记动作捕捉骨骼记录中记录了550个不同LMA质量组合的视频片段。这些片段的样本由2名认证运动分析师标记为多标签训练集,以开发机器学习(ML)算法。这种方法比Bertstein等人之前的单任务机器学习方法在单任务学习上获得了约60%- 4%的召回率和准确率的提高,并通过分析未经训练的人移动一般动作来验证。结果表明,通过家庭设置改进了对噪声感官数据的处理,在不同情况下,姿势和任务中自动识别无标记运动的方法,以及在量化微妙品质方面的适度改进,这是以前没有发现的良好定义的量化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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