基于眼电图(EOG)信号的人工神经网络(ANN)高精度眼动追踪在智能技术中的应用

Mahtab Alam, M. Raihan, Mubtasim Rafid Chowdhury, A. Shams
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引用次数: 2

摘要

眼电图(EOG)信号是角膜和视网膜之间的电位差。当眼睛朝不同方向运动时,电压幅值会发生变化。当眼睛朝特定方向移动时,这种变化会产生明显的EOG模式。因此,通过监测EOG信号,可以跟踪眼球运动。基于EOG的眼动追踪技术可以扩展到神经退行性疾病患者的智能轮椅操作。为了使这种智能轮椅成功运行,需要对EOG信号进行准确分类。在实验研究中,我们在实验室中收集了来自多个个体的两通道EOG信号,并提出了一种基于人工神经网络(ANN)的方法来区分9类EOG信号:上、下、左、右、下、右、上、右和眨眼。这种广泛的分类适用于智能技术平台中复杂的任务。我们的模型可以成功地从测量到的EOG信号的统计特性和主导频率预测眼球运动,准确度、精密度、召回率和F1分数达到99%。这是一个重大的进步,在过去的研究中,不同的研究人员进行了相同的目的,据作者所知,如此高的精度,以前还没有达到9类EOG信号。该模型适用于基于眼球运动的实时智能应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
High Precision Eye Tracking Based on Electrooculography (EOG) Signal Using Artificial Neural Network (ANN) for Smart Technology Application
Electrooculography (EOG) signal is the potential difference between the cornea and the retina of the eye. The voltage amplitude changes when the eye moves in various directions. This change produces a distinct EOG pattern when the eye moves in a particular direction. Therefore, by monitoring the EOG signal, it is possible to track the eye movement. The EOG based eye-tracking technique can be extended to maneuver smart wheelchairs for neurodegenerative disease patients. For a successful operation of such a smart wheelchair, an accurate classification of the EOG signal is required. In this experimental study, we collected two channel EOG signals in the laboratory from multiple individuals and propose an Artificial Neural Network (ANN) based method to differentiate among the nine classes of EOG signals: up, down, left, right, down-left, down-right, up-left, up-right, and blink. This wide range classification would be suitable to perform complicated tasks in smart technology platform. Our model can successfully predict the eye movement from the statistical properties and dominant frequency of the measured EOG signal with an accuracy, precision, recall, and F1 score of 99%. This is a significant improvement over past studies conducted by various researchers for the same purpose and to the knowledge of the authors, such a high accuracy has not been previously achieved for the nine classes of EOG signals mentioned earlier. The proposed model is compatible for real-time smart applications based on eye movements.
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