Automatic detection of children's engagement using non-verbal features and ordinal learning

Jaebok Kim, K. Truong, V. Evers
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引用次数: 7

Abstract

In collaborative play, young children can exhibit different types of engagement. Some children are engaged with other children in the play activity while others are just looking. In this study, we investigated methods to automatically detect the children's levels of engagement in play settings using non-verbal vocal features. Rather than labelling the level of engagement in an absolute manner, as has frequently been done in previous related studies, we designed an annotation scheme that takes the order of children's engagement levels into account. Taking full advantage of the ordinal annotations, we explored the use of SVM-based ordinal learning, i.e. ordinal regression and ranking, and compared these to a rule-based ranking and a classification method. We found promising performances for the ordinal methods. Particularly, the ranking method demonstrated the most robust performance against the large variation of children and their interactions.
使用非语言特征和顺序学习的儿童参与自动检测
在合作游戏中,幼儿可以表现出不同类型的参与。一些孩子和其他孩子一起参加游戏活动,而另一些孩子只是看着。在这项研究中,我们研究了使用非语言语音特征自动检测儿童在游戏环境中参与程度的方法。与以往相关研究中经常采用的绝对方式标注参与程度不同,我们设计了一种标注方案,将儿童参与程度的顺序考虑在内。在充分利用有序标注的基础上,我们探索了基于svm的有序学习,即有序回归和排序,并将其与基于规则的排序和分类方法进行了比较。我们发现有序方法有很好的性能。特别是,排名方法在儿童及其相互作用的巨大变化中表现出最稳健的表现。
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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