基于自动语音处理系统的遇险检测新框架

R. Rana, R. Gururajan, G. Mackenzie, J. Dunn, A. Gray, Xujuan Zhou, P. Barua, J. Epps, G. Humphris
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引用次数: 0

摘要

基于我们正在进行的工作,这个正在进行的项目旨在开发一个自动化系统来检测人们的痛苦,以便及早进行针对焦虑和抑郁的干预,减轻自杀念头,提高对治疗的依从性。该项目将利用现有的语音数据来评估人们的各种痛苦程度,或者根据现有的痛苦测量标准收集语音数据,以开发检测与痛苦相关的各种属性所需的基本计算算法,通过拨打求助热线的人的声音来检测。然后,这将与现有的心理评估工具相匹配,例如这些人的痛苦温度计。为了触发干预,组织背景是必不可少的,因为干预依赖于痛苦的类型。因此,该模型将在各种组织环境中进行测试,如警察、紧急情况和卫生部门,以及通常用于心理评估的痛苦检测工具,以确保准确性和有效性。项目的结果将最终形成一个完全自动化的集成系统,并将为组织节省大量资源。该项目的翻译将在公共政策范围内逐步改善生活质量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Novel Framework for Distress Detection through an Automated Speech Processing System
Based on our ongoing work, this work in progress project aims to develop an automated system to detect distress in people to enable early referral for interventions to target anxiety and depression, to mitigate suicidal ideation and to improve adherence to treatment. The project will utilize either use existing voice data to assess people into various scales of distress, or will collect voice data as per existing standards of distress measurement, to develop basic computing algorithms required to detect various attributes associated with distress, detected through a person's voice in a telephone call to a helpline. This will be then matched with the already available psychological assessment instruments such as the Distress Thermometer for these persons. In order to trigger interventions, organizational contexts are essential as interventions rely on the type of distress. Therefore, the model will be tested on various organizational settings such as the Police, Emergency and Health along with the Distress detection instruments normally used in a psychological assessment for accuracy and validation. The outcome of the project will culminate in a fully automated integrated system, and will save significant resources to organizations. The translation of the project will be realized in step-change improvements to quality of life within the gamut of public policy.
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