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New telecare approach based on 3D convolutional neural network for estimating quality of life

机译:基于3D卷积神经网络的新远程护理方法,估计生活质量

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Quality of life (QoL) is an effective index of well-being, including physical health, aspect of social activity, and mental state of individuals. A new approach that uses a deep-learning architecture to estimate the score of a user's QoL is presented. This system was built using a combination of a 3D convolutional neural network and a support vector machine for multimodal data. In order to evaluate the accuracy of the estimation system, three experiments were conducted. Before these experiments, ten hours of audio and video data were collected from healthy participants during a natural-language conversation with a conversational agent we implemented. In the first experiment, the QoL question-answer estimation experiment, the accuracy of "Physical functioning," which is one of the eight scales that constitute QoL, reached 84.0%. In the second experiment, the QoL-score-regression experiment, in which the scores of each scale were directly estimated, the distribution of the difference between the actual score and the estimated results, known as error, was investigated. These results imply that the features necessary for QoL estimation can be extracted from audio and video data, except for the "Mental Health" domain. One of the reasons why it was difficult to estimate the "Mental Health" scale may be that the learning framework could not extract an appropriate feature for estimation. Therefore, we estimated "Mental Health" by focusing on eye movement. From the result, it was proven that estimation is possible, and the proposed system using multimodal data demonstrated its effectiveness for estimation for all eight scales that constitute QoL and for extracting high-dimensional information regarding the QoL of a human, including their satisfaction level towards daily life and social activities. Finally, suggestions and discussions regarding the plausible behavior of the estimation results were made from the viewpoint of human-agent interaction in the field of elderly welfare. (C) 2020 The Author(s). Published by Elsevier B.V.
机译:生活质量(QOL)是一个有效的幸福性指标,包括身体健康,社会活动的方面,个人的心理状态。呈现了一种新的方法,它呈现了深入学习架构来估计用户QOL的分数。该系统是使用3D卷积神经网络的组合构建的,用于多模式数据的3D卷积神经网络和支持向量机。为了评估估计系统的准确性,进行了三个实验。在这些实验之前,在与我们实施的会话代理商的自然语言对话中,从健康参与者收集10小时的音频和视频数据。在第一次实验中,QOL问题答案估计实验,“物理功能”的准确性,这是构成QoL的八个尺度之一,达到84.0%。在第二个实验中,QOL分数回归实验,其中直接估计了每种规模的分数,研究了实际得分与估计结果之间的差异的分布,称为误差。这些结果意味着除了“心理健康”域之外,可以从音频和视频数据中提取QOL估计所需的特征。难以估计“心理健康”规模的原因之一可能是学习框架无法提取适当的估计特征。因此,我们通过专注于眼球运动估计“心理健康”。从结果中,证明了估计是可能的,并且使用多式联数据的建议系统证明了构成QoL的所有八个尺度的估计有效性,并用于提取关于人类QoL的高维信息,包括他们的满意度日常生活和社会活动。最后,从老年福利领域的人类代理互动的观点来看,提出了关于估计结果的合理行为的建议和讨论。 (c)2020提交人。由elsevier b.v出版。

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