Use of Discrete Sine Transform in EEG signal classification for early Autism detection

P. Ganesh, R. Menaka
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引用次数: 6

Abstract

In this work, a method called Discrete Sine Transform is used in order to classify EEG signals of the brain and are used for the purpose of early autism detection. Autism is a complex behavioral disorder. The EEG signals are obtained by using electrodes that are attached to the brain. Each electrode measures the signals in different regions of the brain as the subject responds to different stimuli. The signals are processed by applying Discrete Sine Transform (DST) and then it is passed as an input to an artificial neural network. DST is used as it greatly simplifies the process and reduces the complexity. The computing tool of a neural network is used in order to objectively estimate whether a subject is suffering from autism. The network is trained with a particular dataset and upon applying a testing input the output was achieved. This study looked at EEG signals, an indirect measure of brain connectivity, and identified patterns that distinguished subjects at an increased risk for autism.
离散正弦变换在脑电图信号分类中的应用
在这项工作中,使用了一种称为离散正弦变换的方法来对大脑的脑电图信号进行分类,并用于早期自闭症检测。自闭症是一种复杂的行为障碍。脑电图信号是通过连接在大脑上的电极获得的。当受试者对不同刺激作出反应时,每个电极测量大脑不同区域的信号。通过离散正弦变换(DST)对信号进行处理,然后作为输入传递给人工神经网络。使用DST,因为它大大简化了流程,降低了复杂性。利用神经网络的计算工具来客观地估计受试者是否患有自闭症。该网络使用特定的数据集进行训练,并在应用测试输入后获得输出。这项研究观察了脑电图信号,这是一种间接测量大脑连通性的方法,并确定了区分自闭症风险增加的受试者的模式。
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