通过瞳孔对光照变化的反应来评估人体功能状态的模型的初始数据收集技术

Oleg Yuryevich Panischev, R. Babayev, Dmitriy Gennadievich Petrosyants, A. Katasev, A. M. Akhmetvaleev, Irina Vladislavovna Akhmetvaleev, D. V. Kataseva
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引用次数: 1

摘要

本文解决了通过瞳孔对光照变化的反应来评估人的功能状态的模型的初始数据收集问题。分析了利用计算机视觉和时间序列平滑方法收集初始数据的传统方法的缺点。注意的重点是初始数据的质量对于建立适当的高精度数学模型的重要性。我们实现了人工标记虹膜和瞳孔圈的需要,以提高初始数据的准确性和质量。我们描述了拟议技术的初始数据收集阶段。我们给出了一个结果瞳孔图的例子,它具有光滑的形状,不包含异常值、噪声、异常和缺失值。基于给定的技术,我们开发了一个软件和硬件综合体,它是一个专门开发的软件的集合,有两个主要模块和硬件实现在树莓派4 B型微型计算机的基础上,与外围设备实现指定的功能。为了评估给定技术收集初始数据的有效性,我们使用了单层透视器模型和神经网络集合,以及关于人的醉酒功能状态的初始数据。研究表明,与计算机视觉方法收集的初始数据相比,人工标记圆生成的初始数据在判断人的功能状态评估时,1属和2属的错误率更低,分类精度更高。因此,收集初始数据的技术可以有效地用于建立模型,通过瞳孔对照明变化的反应来评估一个人的功能状态。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Technology of Collecting Initial Data for Constructing Models for Assessing the Functional State of a Person by Pupillary Response to Changes In Illumination
This article solves the problem of collecting initial data for constructing models for assessing the functional state of a person by pupillary response to changes in illumination. We analyzed the drawbacks of the traditional approach to collecting initial data using computer vision and time series smoothing methods. Attention is focused on the importance of the quality of the initial data for the creation of adequate highprecision mathematical models. We actualized the need for manual marking of the iris and pupil circles to improve the accuracy and quality of the initial data. We described the initial data collection stages in the proposed technology. We gave an example of the resulting pupillogram, which has a smooth shape and does not contain outliers, noise, anomalies and missing values. Based on the given technology, we developed a software and hardware complex, which is a collection of specially developed software that has two main modules and hardware implemented on the basis of a Raspberry Pi 4 Model B microcomputer, with peripheral equipment that implements the specified functionality. To evaluate the effectiveness of the given technology for collecting initial data, we used models of a single-layer perspetron and a collective of neural networks, together with the initial data on the functional state of intoxication of a person. The studies have shown that the number of errors of the 1st and 2nd genus in determining the assessment of the functional state of a person is lower, and the classification accuracy is higher when using the initial data generated by manual marking of circles, compared with the initial data collected by computer vision methods. Thus, the given technology for collecting initial data can be effectively used to build models for assessing the functional state of a person by pupillary response to changes in illumination.
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