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Eye State Detection and Eye Sequence Classification for Paralyzed Patient Interaction

机译:瘫痪患者互动的眼部状态检测和眼部序列分类

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摘要

New approaches of eye state detection and eye sequence identification for computer interface of paralyzed patients are proposed. In this work, patients can interact via sequences of four eye states that are close, forward-glance, rightward-glance, and leftward-glance states. To detect the eye states, eye images are firstly segmented by using FCM clustering scheme in a feature space of RGB color components and pixel coordinate. Features are extracted from image projection and bottom edge curve of the segmented eye image. Then, the eye state is recognized by using SVM. The eye state sequences can be identified by using modified Levenshtein distances between unknown eye sequences and prototypes of command sequences which are generated using HMM. The experiments show that accuracies of eye state classification are 95.37% for four-class classification and 99.47% for open-close state classification. An accuracy of the sequence pattern recognition is 91.32% which can be concluded that the proposed method works effectively for the purpose of paralyzed patient interaction.
机译:提出了一种用于瘫痪患者计算机界面的眼睛状态检测和眼睛序列识别的新方法。在这项工作中,患者可以通过四个眼睛状态的序列进行交互,这四个眼睛状态分别是近视,前视,右视和左视状态。为了检测眼睛状态,首先通过FCM聚类方案在RGB颜色分量和像素坐标的特征空间中对眼睛图像进行分割。从图像投影和分割后的眼睛图像的底边缘曲线中提取特征。然后,通过使用SVM识别眼睛状态。可以通过使用未知眼序列和使用HMM生成的命令序列原型之间的修改的Levenshtein距离来识别眼状态序列。实验表明,四类分类的眼睛状态分类的准确性为95.37%,开闭状态分类的准确性为99.47%。序列模式识别的准确性为91.32%,可以得出结论,该方法对于瘫痪的患者互动有效。

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