视频视觉(VOG)和电视觉(EOG)信号特征提取研究进展

Iqbal Kurniawan Asmar Putra, Muhammad Ainul Fikri, Syukron Abu Ishaq Alfarozi, S. Wibirama
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引用次数: 0

摘要

眼动追踪是用来观察用户看的地方,看的时间,看的顺序。眼动追踪技术已广泛应用于各种领域,如利用电眼动图(EOG)帮助残疾人,利用视频眼动图(VOG)分析前庭病人的眼动信号。人的眼睛有一个角膜和视网膜,它们位于人眼的前部和后部之间。眼动信号分析是眼动分类的必要步骤。选择模型和调整眼动特征提取算法是研究人员不断优化的任务。然而,对于各种VOG和EOG信号特征提取方法的研究却很少。为了解决这一研究空白,本文系统地介绍了适合于VOG和EOG信号分析的特征提取方法。在选择特征提取方法时,需要考虑三个主要因素:(1)分类,(2)滤波器和放大器,(3)数据集特征。本文的研究结果可为开发EOG和VOG应用的特征提取算法提供参考。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Review of Feature Extraction on Video-Oculography (VOG) and Electro-Oculography (EOG) Signals
Eye tracking is used to observe where users are looking, how long they are looking, and what order they are looking. Eye tracking has been widely used in various fields such as helping people with disabilities by using Electro-Oculography (EOG) and analyzing eye movements signal in vestibular patients by using Video-Oculography (VOG). The human eye has a cornea and retina that are located between the front and back of the human eye. Eye movement signal analysis is a necessary step prior to eye movement classification. Selecting a model and tuning the feature extraction algorithm on eye movements are tasks that researchers continue to optimize. However, there are very few studies investigating various feature extraction methods in VOG and EOG signals. To solve this research gap, this paper systematically describes feature extraction that is suitable for use in VOG and EOG signal analysis. Three main factors are important to be considered when choosing a feature extraction method: (1) classification, (2) filters and amplifiers, and (3) dataset characteristics. The results of this literature review can be used as a reference for developing feature extraction algorithms for EOG and VOG applications.
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