未成年智能手机用户监控系统

M.A.P Jayawardena, M.H.F.M Mahadi Hassan, M.I.A Aflal, W.A.H Weerathunga, S. Harshanath, U. U. Samantha Rajapaksha
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引用次数: 0

摘要

在当今世界,孩子们使用智能手机或手持数字设备(如平板电脑)来娱乐自己,并作为与人轻松社交的媒介,这是非常普遍的。COVID-19大流行迫使许多人呆在家里,依靠这些数字设备进行日常工作和沟通。后者导致人们越来越依赖数字设备来获取有关外部世界的信息,并将其作为娱乐来源。这种新趋势增加了儿童接触色情、网络欺凌、网络跟踪、过度游戏、色情短信以及与自恋相关的行为特征的可能性。这些习惯导致许多孩子患上心理和生理疾病,这些疾病在短期内影响了他们,对一些人来说,从长远来看影响了他们和他们的家庭,比如自杀。我们的研究建议持续监测这种行为模式,通知相关个人,防止孩子容易发生这种不幸的命运。根据研究结果,使用机器学习和自然语言处理、色情短信、留声机单词和网络欺凌都可以精确地识别出来。此外,通过使用两种机器学习模型,检测抑郁和焦虑的准确率分别为0.84和0.86。预防和分析因面部屏幕距离不当引起的计算机视觉综合征。一种基于图像处理的算法被用来测量人脸到屏幕的距离,结果被缩小到1英寸的精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Monitoring System for Underage Smart Phone Users
In today’s world, it is very common among children to use a smartphone or a handheld digital device such as a tablet to entertain themselves and as a medium of socializing with people easily. The COVID-19 pandemic forced many people to stay in their homes and rely on these digital devices to do their day-to-day work and communication. The latter caused the increase in reliance on digital devices to acquire information about the outside world and as a source of entertainment. This new tendency increased the likelihood of children being exposed to pornography, cyberbullying, cyberstalking, excessive gaming, sexting, and behavioral traits related to narcissism. These habits caused many children to develop psychological and physiological illnesses, which affected them in the short term and, for some, which affected them and their families in the long run, such as suicide. Our research proposes to constantly monitor behavioral patterns such as this, notify the relevant individuals, and prevent the children from being prone to such ill fates. According to the findings, using machine learning and natural language processing, sexting, phonographic words, and cyberbullying can all be recognized with pinpoint accuracy. Also, by using two machine learning models, depression and anxiety are detected with an accuracy of 0.84 and 0.86. To prevent and analyze computer vision syndrome caused by improper face-screen distance. An image processing-based algorithm is used to measure the distance from face to screen, and results are narrowed down to an accuracy of 1 inch.
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