IRIS酒精检测的MDLNN方法

Arikatla Venkata Reddy, Pasupuleti Sai Kumar, Pathan Asif Khan, Venkata Subba Reddy Karumudi, Pradeepini G, S. Sagar Imambi
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引用次数: 0

摘要

在本研究中,讨论了一种分析近红外虹膜视频帧以估计行为曲线的新方法。一个适合工作的系统可以使用这种技术(FFD)。该研究旨在确定中枢神经系统(CNS)如何受到酒精、药物和疲劳等外界因素的影响。目的是研究虹膜和瞳孔运动的表现,以及可以观察到的行为,并探索通过使用近红外相机记录这些变化的可能性。行为分析揭示了瞳孔和虹膜行为的显著差异,这可以用来确定员工是“适合”还是“不适合”。最好的结果清楚地区分了醉酒、吸毒或睡觉的参与者,“健康”类别的总体准确率为74.0%,“不健康”类别的总体准确率为75.5%。梯度增强机和多层感知机产生了最有利的结果。这些结果表明虹膜捕获装置具有新的应用前景。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
MDLNN Approach for Alcohol Detection using IRIS
In this study, a novel approach to Analyzing Near-Infrared (NIR) iris video frames to estimate behavioral curves is discussed. A Fitness for Duty system can employ this technique (FFD). The study aims to ascertain how the Central Nervous System (CNS) is affected by outside elements including alcohol, drugs, and tiredness. The purpose is to examine the representation of this in terms of iris and pupil movements, and behavior that can be observed and explores the possibility of recording these changes through the use of NIR cameras. The behavioral analysis revealed significant differences in pupil and iris behavior, which can be used to determine if an employee is "Fit" or "Unfit". The best results clearly distinguished between participants who were drunk, high, or sleeping, with an overall accuracy of 74.0% for the "Fit" class and 75.5% for the "Unfit" class. The Gradient Boosted Machine and Multi-Layer Perceptron produced the most favorable outcomes. These results present iris-capturing devices as novel applications.
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