在门诊环境中基于cnn的压力和情绪识别

Leonidas Liakopoulos, Nikolaos Stagakis, E. Zacharaki, K. Moustakas
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引用次数: 7

摘要

压力已被认为是许多精神、心理或身体状况的主要因素,这些状况会降低人类的生活质量。通过随时可用的可穿戴设备和不显眼的传感器监测情感状态,可以识别压力和倦怠的早期迹象,从而制定预防政策,以对抗心理社会风险。本研究利用信号处理技术和先进的机器学习方法分析来自不同感知模式的数据,以便不显眼地识别压力和负面情绪。我们研究了在动态环境中容易获得的心率信号的性能,并将其与来自电生理信号、面部表情特征和身体姿势的多模态信息并置。对于前者,我们将二维频谱图引入卷积神经网络(CNN),并使用获得的激活图作为区分应激条件的频率模式。对于其余的传感器,我们比较了不同的分类器(支持向量机,KNN,随机森林,神经网络)和数据融合方案。此外,第二阶段的评估概念是利用智能手机摄像头拍摄的图像,从面部表情中反映出情绪识别。我们在Android平台上的CNN实现可以近乎实时地估计瞬时的情绪表达,当与压力指标相结合时,可以帮助阐明压力与消极情感状态之间的关系。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
CNN-based stress and emotion recognition in ambulatory settings
Stress has been recognized as a major contributor in a number of mental, psychological or physical conditions which reduce the quality of human life. The monitoring of affective states through readily available wearables and unobtrusive sensors can allow to recognize early signs of stress and burn-out, thereby develop prevention policies to combat psychosocial risks. This study analyzes data from diverse sensing modalities with signal processing techniques and advanced machine learning approaches in order to unobtrusively recognize stress and negative emotions. We investigate the performance of - easy to obtain in ambulatory settings - heart rate signal and juxtapose it against multi-modal information from electrophysiological signals, facial expression features and body posture. For the former, we introduce 2D spectrograms into a convolutional neural network (CNN) and use the obtained activation maps as frequency patterns differentiating stressful conditions. For the rest of the sensors, we compare different classifiers (SVM, KNN, Random Forest, Neural Networks) and data fusion schemes. In addition, a second phase assessment is conceptualized for emotion recognition reflected in facial expressions using images from a smartphone’s camera. Our CNN implementation in Android platform enables near real-time estimation of the instantaneous emotional expressions, which, when combined with stress-indicators, can help elucidating the relationship between stress and negative affective states.
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