基于面部情绪和生理传感器的多模态压力分类方法

M. S. Abirami, Umang Shringi, Aditya Mishra
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引用次数: 0

摘要

重点是理解情绪压力本身可以增强参与情绪检测和人机交互的人工智能代理。这些情绪反应反映在情绪和面部表情中。本研究提出了基于面部表情和生理传感器的压力分类研究。对于人脸数据的获取,采用迁移学习与微调相结合的方法从人脸图像中提取特征。在迁移学习中,使用了不同的深度学习架构,如VGG-19[13], ResNet。从传感器中收集年龄、性别、体温和心跳四个特征数据,并据此选择结构进行压力分类。最后,为了得到更好的结果,对这两种模型进行了集成。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multimodal Approach for Classifying Stress using Facial Emotion and Physiological Sensors
The focus is on understanding emotional stress by itself may enhance artificial intelligence agents involved in emotion detection and human computer interaction. These emotional responses are reflected into emotions and facial expressions. This research work proposes a study of Stress Classification using both facial expression and Physiological Sensors. For getting facial data, transfer learning is used with fine-tuning to extract features from facial images. In transfer learning different Deep Learning architectures like VGG-19[13], ResNet are used. From the sensors data on four features are collected that is age, gender, body temperature and heartbeat and accordingly choose the architecture for doing stress classification. Finally, both these models are integrated for getting better results.
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