Construction of the interest prediction models for nursery school child using a single-channel electroencephalograph

S. Kanoga, Y. Mitsukura
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引用次数: 1

Abstract

This paper aims to construct the interest prediction models for nursery school child using a single-channel electroencephalograph (EEG). Recently, the number of dual income households who leave their children in nursery schools have been increasing in Japan. Such parents are not able to grasp their children's behavior in daily life. Considering these issues, the researches related to child behavioral analysis have been proceeded by using image data taken from digital cameras. However, it is difficult to acquire the behavioral information from the digital cameras at anytime, anywhere. Therefore, we are focusing on wearable systems for keeping an eye on a child. Specifically, we adopt the EEG to design the constructing system. In this paper, we acquire single-channel EEG recordings from nursery school children when they watch picture-story shows. Furthermore, we apply a non-negative matrix factorization (NMF) to artifactitious rejection and a genetic algorithm-partial least squares (GA-PLS) regression to detect important frequency components and design the interest prediction models for the child using a single-channel EEG. As a result, we showed that over 60% estimation accuracy could be obtained all except one subject and the specific combinations of the frequency components selected by the GA-PLS, and we also could confirm that the NMF could remove the eye blink artifacts.
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利用单通道脑电图仪构建幼儿兴趣预测模型
本文旨在利用单通道脑电图(EEG)构建幼儿兴趣预测模型。最近,在日本,把孩子留在幼儿园的双职工家庭越来越多。这样的父母无法掌握孩子在日常生活中的行为。考虑到这些问题,儿童行为分析的相关研究都是利用数码相机拍摄的图像数据进行的。然而,在任何时间、任何地点从数码相机中获取行为信息是很困难的。因此,我们将重点放在可穿戴系统上,用于照看孩子。具体来说,我们采用脑电图来设计构建系统。在本文中,我们获取了幼儿园儿童在观看绘本故事节目时的单通道脑电图记录。此外,我们将非负矩阵分解(NMF)用于人工抑制,并将遗传算法-偏最小二乘(GA-PLS)回归用于检测重要的频率成分,并设计了使用单通道脑电图的儿童兴趣预测模型。结果表明,除了一个被试和由GA-PLS选择的特定频率成分组合外,NMF可以获得60%以上的估计精度,并且我们也可以证实NMF可以去除眨眼伪影。
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