利用声学和语义信息检测真实演讲中的日常压力。

IF 2 3区 工程技术 Q3 ENGINEERING, INDUSTRIAL Ergonomics Pub Date : 2024-11-25 DOI:10.1080/00140139.2024.2430370
Peixian Lu, Liuxing Tsao, Liang Ma
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引用次数: 0

摘要

检测日常压力对工作场所的安全和健康至关重要,自然语音被推荐为精神压力检测的主要方法之一。本研究通过融合声学和语义信号,开发了从真实语音中检测日常压力的机器学习模型。首先,我们从在线聊天平台的 "生活压力宣泄室 "中收集了真实的语音数据,并建立了一个包含真实日常压力的语音数据库。其次,我们获得了用于压力检测的常见机器学习分类器的模型性能,并将其与人工性能进行了比较。仅使用声学信号,压力检测分类器取得了 74.25% 的准确率和 83.73% 的 F1 分数,表现令人满意。通过与语义信号的融合,压力检测模型的性能得到了显著提高,达到了 81.20% 的准确率和 87.46% 的 F1 分数,验证了语义信息在日常压力检测中的重要性。同时,机器学习模型的最佳性能接近人类的识别能力。本研究的结果验证了基于真实语音检测日常压力的可行性。本研究开发的模型可用于现实生活中的日常压力检测,并能为压力干预提供信息,以减轻对健康的负面影响。
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Daily stress detection from real-life speeches using acoustic and semantic information.

Detecting daily stress is of vital importance for workplace safety and health, and natural speech is recommended as one of the main methods of mental stress detection. This study developed machine-learning models for daily stress detection from real-life speeches by fusing its acoustic and semantic signals. First, we collected real-life speech data from life-stress-catharsis room of online chat platform and established a speech database with real daily stress. Second, we obtained the model performances of common machine-learning classifiers for stress detection and compared them with human performance. The stress-detection classifiers achieved a promising performance of 74.25% accuracy and 83.73% F1-score using only acoustic signal. By fusing with the semantic signal, the stress detection model performance was significantly improved and achieved a performance of 81.20% accuracy and 87.46% F1-score, which validated the importance of semantic information in daily stress detection. Meanwhile, the best performance of the machine learning model was close to the human recognition capability. The results of this study validated the feasibility of detecting daily stress based on real speech. The models developed in this study could be used for daily stress detection in real life and can provide information for stress interventions to ease the negative effects on health.

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来源期刊
Ergonomics
Ergonomics 工程技术-工程:工业
CiteScore
4.60
自引率
12.50%
发文量
147
审稿时长
6 months
期刊介绍: Ergonomics, also known as human factors, is the scientific discipline that seeks to understand and improve human interactions with products, equipment, environments and systems. Drawing upon human biology, psychology, engineering and design, Ergonomics aims to develop and apply knowledge and techniques to optimise system performance, whilst protecting the health, safety and well-being of individuals involved. The attention of ergonomics extends across work, leisure and other aspects of our daily lives. The journal Ergonomics is an international refereed publication, with a 60 year tradition of disseminating high quality research. Original submissions, both theoretical and applied, are invited from across the subject, including physical, cognitive, organisational and environmental ergonomics. Papers reporting the findings of research from cognate disciplines are also welcome, where these contribute to understanding equipment, tasks, jobs, systems and environments and the corresponding needs, abilities and limitations of people. All published research articles in this journal have undergone rigorous peer review, based on initial editor screening and anonymous refereeing by independent expert referees.
期刊最新文献
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