标题: | 通过生理分析使用者情绪 Analysis of users’ emotions through physiology |
作者: | 苗博丹 曾煜棋 Bohdan Myroniv Tseng, Yu-Chee 电机资讯国际学程 |
关键字: | 情感认知;机器学习;生理讯号;穿戴式装置;Emotion Recognition;Machine Learning;Physiological signals;Wearable devices |
公开日期: | 2017 |
摘要: | 现今大多数的穿戴式智慧装置着重于人体行为辨识,例如慢跑、骑脚踏车、游泳,甚至是睡眠。这些发明帮助我们检视自己的身体状况也使我们保持健康。但实际上影响我们健康的原因,不仅仅只是形于外的肢体活动,人们每天的精神状态及情绪起伏其实也包含在其中。这几种因素环环相扣,显着地影响人类行为与身体健康。于是这几年来,有越来越多研究者开始投入心力在情感认知上。于此篇论文中,我们使用现成的穿戴式感应器,例如心跳率、皮肤导电反应和体感温度侦测来解读使用者的生理讯号,并运用机器学习技术来分析受测者的情绪状态。这些情绪状态是能提升身理健康和human-machine interaction的关键因素。我们对实际情境进行了实验并假设共有三种情绪状态,由数据结果得知,此试验达到相当高的识别准确率,有97.31% 。除此之外,我们开发一个Android系统的应用程式,它可以透过蓝芽装置与实验系统连接,便可即时了解受测者的情绪状态。 Most of the existing smart bands focus on physical activities recognition, such as running, cycling and even sleeping. They help us to monitor our physical health and keep ourselves healthy. But what influences our health is not only physical activities, it also includes mental and emotional states that we experience throughout the day. These states build our behavior and affect our physical health significantly. Therefore, emotion recognition draws more and more attention of researchers in recent years. In this thesis, we propose a system that uses off-the-shelf wearable sensors, such as heart-rate, galvanic skin response, and body temperature sensors, to read physiological signals from the user and apply machine learning techniques to recognize emotional states of the user. These states are key steps towards improving not only physical health but also emotional intelligence in advanced human-machine interaction. We consider three types of emotional states and conducted experiments on real-life scenarios, achieving highest recognition accuracy of 97.31%. Furthermore we have developed Android application that connects to our prototype via Bluetooth and detects users’ emotional state in real-time fashion. |
URI: | http://etd.lib.nctu.edu.tw/cdrfb3/record/nctu/#GT070460810 http://hdl.handle.net/11536/141782 |
显示于类别: | Thesis |