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Electrooculography-based Eye Movement Classification using Deep Learning Models

机译:基于电胶的眼球运动分类使用深度学习模型

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Amyotrophic lateral sclerosis (ALS), also known as motor neuron disease (MND), is a specific disease that causes the death of neurons controlling voluntary muscles. Most ALS patients eventually lose the ability to walk, use their hands, speak, swallow, and breathe. In this paper, we use the electrooculogram (EOG) signals captured using four sensors placed on the controlling muscles of the eye movement in horizontal and vertical directions to classify four different eye movements. The classifier output is used to control a wheelchair, or any other device developed to help ALS patients in performing their daily needs. Contrary to the classical classification techniques where features are extracted first from the EOG signals, then used with a trained classifier, in this paper the EOG signals are fed directly into two deep neural networks using, respectively, the long-short term memory (LSTM) and the convolutional neural network (CNN). The results show an accuracy of 88.33% for the LSTM network and 90.3% for the CNN network in eye movement classification.
机译:肌营养的外侧硬化症(ALS),也称为运动神经元疾病(MND),是导致控制自愿肌肉的神经元死亡的特异性疾病。大多数ALS患者最终失去了行走的能力,用手,说话,吞咽和呼吸。在本文中,我们使用使用在水平和垂直方向上的眼睛运动的控制肌上的四个传感器捕获的电帘图(EOG)信号,以分类四种不同的眼睛运动。分类器输出用于控制轮椅,或者任何其他设备,以帮助ALS患者进行日常需求。与首先从EOG信号提取特征的经典分类技术相反,然后与训练分类器一起使用,本文将EOG信号直接进入两个深神经网络,使用长短短期内存(LSTM)和卷积神经网络(CNN)。结果表明,LSTM网络的准确性为88.33%,CNN网络在眼球运动分类中的90.3%。

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