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Discriminative functional analysis of human movements

机译:人体运动的判别功能分析

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This paper investigates the use of statistical dimensionality reduction (DR) techniques for discriminative low dimensional embedding to enable affective movement recognition. Human movements are defined by a collection of sequential observations (time-series features) representing body joint angle or joint Cartesian trajectories. In this work, these sequential observations are modelled as temporal functions using B-spline basis function expansion, and dimensionality reduction techniques are adapted to enable application to the functional observations. The DR techniques adapted here are: Fischer discriminant analysis (FDA), supervised principal component analysis (PCA), and Isomap. These functional DR techniques along with functional PCA are applied on affective human movement datasets and their performance is evaluated using leave-one-out cross validation with a one-nearest neighbour classifier in the corresponding low-dimensional subspaces. The results show that functional supervised PCA outperforms the other DR techniques examined in terms of classification accuracy and time resource requirements.
机译:本文研究使用统计维数减少(DR)技术进行判别性低维嵌入,以实现情感运动识别。人体运动是通过一系列代表身体关节角度或关节笛卡尔轨迹的观测值(时间序列特征)定义的。在这项工作中,使用B样条基函数扩展将这些顺序观察建模为时间函数,并采用降维技术以使其能够应用于功能观察。此处采用的DR技术包括:Fischer判别分析(FDA),监督主成分分析(PCA)和Isomap。将这些功能性DR技术与功能性PCA一起应用于情感性人体运动数据集,并通过在相应的低维子空间中使用近邻一分类器进行留一法交叉验证来评估其性能。结果表明,在分类准确性和时间资源要求方面,功能监督的PCA优于其他DR技术。

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