An Iris based Smart System for Stress Identification

Amna Haider, Tassadaq Hussain, Areeb Agha, B. Khan, Fawad Rashid, Sohail Muzamil, Abdelmalik Taleb Ahmed, S. Alharbi, E. Ayguadé
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引用次数: 3

Abstract

The critical stress problem is a crucial issue that needs considerations and requires a solution. A number of methods are used to identify and control the stress which includes different counseling programs and medication. But the diagnosis and identification of the stress and its levels is an important issue which does not have an on-time and accurate solution. Therefore, a non-invasive stress identification system is required that can identify stress and it's level. In this work, we have proposed and developed a non-invasive smart system for stress identification (SSSI). The SSSI takes human iris image and applies machine learning techniques to identify the level of stress based on the iridology map. While testing with 50 subjects having stress, the results confirm that the SSSI identifies the stress with an accuracy of 98%.
基于虹膜的压力识别智能系统
临界应力问题是一个需要考虑和解决的关键问题。许多方法被用来识别和控制压力,包括不同的咨询项目和药物治疗。但压力及其水平的诊断和识别是一个重要的问题,没有一个及时和准确的解决方案。因此,需要一种非侵入性的压力识别系统来识别压力及其水平。在这项工作中,我们提出并开发了一种非侵入性的应力识别智能系统(SSSI)。SSSI采用人类虹膜图像,并应用机器学习技术来识别基于虹膜学图的压力水平。在对50名有压力的受试者进行测试时,结果证实SSSI识别压力的准确率为98%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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