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2D affective space model (ASM) for detecting autistic children

机译:用于检测自闭症儿童的2D情感空间模型(ASM)

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There are many research works have been done on autism cases using brain imaging techniques. In this paper, the Electroencephalogram (EEG) was used to understand and analyze the functionality of the brain to identify or detect brain disorder for autism in term of motor imitation. Thus, the portability and affordability of the EEG equipment makes it a better choice in comparison with other brain imaging device such as functional magnetic resonance imaging (fMRI), positron emission tomography (PET) and megnetoencephalography (MEG). Data collection consists of both autistic and normal children with the total of 6 children for each group. All subjects were asked to clinch their hand by following video stimuli which presented in 1 minute time. Gaussian mixture model was used as a method of feature extraction for analyzing the brain signals in frequency domain. Then, the extraction data were classified using multilayer perceptron (MLP). According to the verification result, the percentage of discriminating between both groups is up to 85% in average by using k-fold validation.
机译:使用脑成像技术对自闭症病例进行了许多研究。在本文中,脑电图(EEG)用于理解和分析大脑的功能,以模仿运动来识别或检测自闭症的脑部疾病。因此,与其他脑部成像设备(例如功能磁共振成像(fMRI),正电子发射断层扫描(PET)和脑磁图(MEG))相比,EEG设备的便携性和可承受性使其成为更好的选择。数据收集包括自闭症儿童和正常儿童,每组总共6个儿童。要求所有受试者紧接着1分钟内呈现的视频刺激,握紧他们的手。高斯混合模型被用作特征提取的方法,以分析频域中的大脑信号。然后,使用多层感知器(MLP)对提取数据进行分类。根据验证结果,使用k倍验证,两组之间的区分率平均最高可达85%。

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