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Automatic assessment of affective episodes for daily activities analysis

机译:自动评估情感情节以进行日常活动分析

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Monitoring health conditions and events of grandparent-headed family is important to increase their quality of life and reduce care burdens. Affective episodes are significant indexes in monitoring behavior changes. In this paper, we propose an information retrieval approach to extract affect words from speech and written text to provide quantitative evidence of physical functions and social interactivity for living support and the health related quality of life assessment. Hidden Markov model with a developed behavior grammar network was adopted to transcribe speech. Combined with written texts, an adjusted term-frequency and a sliding window method were performed to extract and quantify affect words. A quantitative index scored by trigger pair approach was applied to assess affective episodes with time and place. Experimental results and case study revealed that the proposed approach shows encouraging potential in monitoring daily activity and family dialog. Its extension may provide an alternative way to obtain implicit information of emotional expression between a family.
机译:监测祖父母家庭的健康状况和事件对于提高他们的生活质量和减轻护理负担很重要。情感情节是监视行为变化的重要指标。在本文中,我们提出一种信息检索方法,从语音和书面文本中提取影响词,以提供身体功能和社交互动的定量证据,以维持生活并评估与健康相关的生活质量。采用具有发展的行为语法网络的隐马尔可夫模型来转录语音。结合书面文本,进行了调整后的词频和滑动窗口方法来提取和量化情感词。通过触发对方法对定量指标进行评分,以评估随时间和地点发生的情感发作。实验结果和案例研究表明,所提出的方法在监控日常活动和家庭对话方面显示出令人鼓舞的潜力。它的扩展可以提供一种获取家庭之间情感表达的隐式信息的替代方法。

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