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An analytical method for face detection based on image patterns of EEG signals in the time-frequency domain

机译:基于时频域脑电信号图像模式的人脸检测分析方法

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Although face-to-face communication includes the richest information, amyotrophic lateral sclerosis patients cannot smoothly communicate with others and express their emotions because of paralyzed muscles. Therefore, the N170 responses of EEG signals were analyzed to detect face stimuli in real time. We also proposed an analytical method for feature extraction of a support vector machine (SVM) classifier with the bag of features scheme to overcome the general difficulty in setting of kernel parameters of SVM. The proposed method resulted in a constantly high accuracy in the face classification; the SVM classifier based on image pattern recognition in the time frequency domain efficiently enables easier setting of the non-linear kernel parameter. Further studies will be required to apply the proposed method for feature extraction to practical devices.
机译:尽管面对面的交流包括最丰富的信息,但肌萎缩性侧索硬化症患者由于肌肉麻痹而无法与他人进行顺畅的交流并表达自己的情绪。因此,分析了脑电信号的N170响应以实时检测面部刺激。我们还提出了一种使用特征包方案的支持向量机(SVM)分类器特征提取的分析方法,以克服设置SVM内核参数的一般难题。所提出的方法在人脸分类中始终保持较高的准确性;基于时频域中图像模式识别的SVM分类器有效地简化了非线性核参数的设置。将需要进行进一步的研究,以将建议的特征提取方法应用于实际设备。

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