D. Gutierrez-Hernandez, Miguel S. Gómez-Díaz, Francisco J. Casillas-Rodríguez, Emmanuel Ovalle-Magallanes
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引用次数: 0
摘要
本文采用瞳孔测量法作为一种非侵入性技术,利用 LED 闪光刺激来分析瞳孔光反射(PLR)。在实验中,仅使用波长为 600 nm 的红色 LED 作为光刺激源。为了稳定初始瞳孔大小,实验中设置了 3 秒钟的刺激前(PRE)时间,然后是 1 秒钟的刺激时间(ON)和 4 秒钟的刺激后(POST)时间。此外,还设计了一个低成本的瞳孔仪实验原型,用于捕捉 13 名参与者的瞳孔图像。原型包括一个 200 万像素的网络摄像头和一个由红外线和 RGB LED 组成的照明系统,分别用于在弱光条件下捕捉图像和刺激诱导。这项研究揭示了对瞳孔现象进行分类的几个特征,特别是 Hjórth 参数的流动性,分类率达到 97% 到 99%,并为瞳孔活动的模式识别提供了新的见解。此外,所提议的设备还成功捕获了所有参与者的瞳孔活动,且无任何事故或健康影响报告。
Characterization of Pupillary Light Response through Low-Cost Pupillometry and Machine Learning Techniques
This article employed pupillometry as a non-invasive technique to analyze pupillary light reflex (PLR) using LED flash stimuli. Particularly, for the experiments, only the red LED with a wavelength of 600 nm served as the light stimulation source. To stabilize the initial pupil size, a pre-stimulus (PRE) period of 3 s was implemented, followed by a 1 s stimulation period (ON) and a 4 s post-stimulus period (POST). Moreover, an experimental, low-cost pupillometer prototype was designed to capture pupillary images of 13 participants. The prototype consists of a 2-megapixel web camera and a lighting system comprising infrared and RGB LEDs for image capture in low-light conditions and stimulus induction, respectively. The study reveals several characteristic features for classifying the phenomenon, notably the mobility of Hjórth parameters, achieving classification percentages ranging from 97% to 99%, and offering novel insights into pattern recognition in pupillary activity. Moreover, the proposed device successfully captured the PLR from all the participants with zero reported incidents or health affectations.