结合深度学习和信号-图像编码的多模态心理健康分类

Kieran Woodward, Eiman Kanjo, Athanasios Tsanas
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引用次数: 0

摘要

情绪状态的量化是理解幸福的重要一步。来自多种模式的时间序列数据,如生理和运动传感器数据,已被证明是测量和量化情绪的组成部分。长时间监测情绪轨迹继承了一些与训练数据大小有关的关键限制。这个缺点可能会阻碍可靠和准确的机器学习模型的发展。为了解决这一问题,本文提出了一个框架来解决执行情绪状态识别的局限性:1)将时间序列数据编码为彩色图像;2)利用预训练的对象识别模型,使用第1步的图像应用迁移学习(TL)方法;3)利用一维卷积神经网络(CNN)对生理数据进行情绪分类;4)将预训练的TL模型与1D CNN拼接。我们证明,使用我们的框架可以提高模型在推断5点李克特量表上的真实世界幸福感时的表现,准确率高达98.5%,比传统的CNN高出4.5%。使用相同方法的受试者独立模型的平均准确率为72.3% (SD 0.038)。所提出的方法有助于提高性能并克服小型训练数据集的问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Combining Deep Learning with Signal-image Encoding for Multi-Modal Mental Wellbeing Classification
The quantification of emotional states is an important step to understanding wellbeing. Time series data from multiple modalities such as physiological and motion sensor data have proven to be integral for measuring and quantifying emotions. Monitoring emotional trajectories over long periods of time inherits some critical limitations in relation to the size of the training data. This shortcoming may hinder the development of reliable and accurate machine learning models. To address this problem, this paper proposes a framework to tackle the limitation in performing emotional state recognition: 1) encoding time series data into coloured images; 2) leveraging pre-trained object recognition models to apply a Transfer Learning (TL) approach using the images from step 1; 3) utilising a 1D Convolutional Neural Network (CNN) to perform emotion classification from physiological data; 4) concatenating the pre-trained TL model with the 1D CNN. We demonstrate that model performance when inferring real-world wellbeing rated on a 5-point Likert scale can be enhanced using our framework, resulting in up to 98.5% accuracy, outperforming a conventional CNN by 4.5%. Subject-independent models using the same approach resulted in an average of 72.3% accuracy (SD 0.038). The proposed methodology helps improve performance and overcome problems with small training datasets.
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CiteScore
10.30
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