Punithavathi R, Sharmila M, Avudaiappan T, Raj I Infant, Kanchana S, Mamo Samson Alemayehu
Department of Information Technology, M.Kumarasamy College of Engineering (Autonomous), Karur, TN, India.
Computer Science and Engineering, K. Ramakrishnan College of Technology, Trichy 621112, India.
Evid Based Complement Alternat Med. 2022 Apr 7;2022:6395860. doi: 10.1155/2022/6395860. eCollection 2022.
Over the past few decades, the rate of diagnosing depression and mental illness among youths in both genders has been emerging as a challenging issue in the present society. Adequate numbers of cases that have been prevailing had unheard of symptoms linked to mental depression that are able to be detected using their voice recordings and their messages in social media websites. Due to the wide spread usage of mobile phones, services and social sites emotion prediction and analyzing have been an indispensable part of providing vital care for the eminence of youth's life. In addition to dynamicity and popularity of mobile applications and services, it is really a challenge to provide an emotion prediction system that can collect, analyze, and process emotional communications in real time and as well as in a highly accurate manner with minimal computation time. Few depression prediction researchers have analyzed and examined that various social networking sites and its activities may be merged to low self-confidence, particularly in young people and adolescents. Moreover, the researchers suggest that several objective voice acoustic measures affected by depression can be detected reliably over the smart phones. And also in some observational study, it is stated that speech samples of patients from the telephone were obtained each week using an IVR system, and voice recording files from smart phones have been under process for predicting the depression. Such that several telephonic standards for obtaining voice data were identified as a crucial factor influencing the reliability and eminence of speech data. Hence, this article investigates on different process applied in different machine learning algorithms in recognizing voice signals which in turn will be used for scrutinizing the techniques for detecting depression levels in future. This will make a blooming change in the youth's life and solve the social unethical issues in hand.
在过去几十年里,青少年中抑郁症和精神疾病的诊断率已成为当今社会一个具有挑战性的问题。大量普遍存在的病例出现了与精神抑郁相关的前所未闻的症状,这些症状可以通过他们的语音记录和社交媒体网站上的信息检测出来。由于手机、服务和社交网站的广泛使用,情感预测和分析已成为为青少年生活提供重要关怀不可或缺的一部分。除了移动应用和服务的动态性和普及性之外,提供一个能够实时、高精度且以最少计算时间收集、分析和处理情感交流的情感预测系统确实是一项挑战。很少有抑郁症预测研究人员分析和研究过各种社交网站及其活动可能与自信心低落有关,尤其是在年轻人和青少年中。此外,研究人员表明,受抑郁症影响的几种客观语音声学指标可以通过智能手机可靠地检测出来。在一些观察性研究中还指出,每周使用交互式语音应答(IVR)系统从电话中获取患者的语音样本,并且来自智能手机的语音记录文件一直在用于预测抑郁症。因此,确定了几个获取语音数据的电话标准是影响语音数据可靠性和质量的关键因素。因此,本文研究了不同机器学习算法中用于识别语音信号的不同过程,这些过程反过来将用于未来审查检测抑郁症水平的技术。这将给青少年的生活带来巨大变化,并解决手头的社会道德问题。