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Data Analysis for Emotion Classification Based on Bio-Information in Self-Driving Vehicles

机译:基于自行车车辆生物信息的情感分类数据分析

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All persons in self-driving vehicle would like to receive each service. To do it, the system has to know the person’s state from emotion or stress, and to know the person’s state, it has to catch by analyzing the person’s bio-information. In this paper, we propose a system for inferring emotion using EEG, pulse, blood pressure (systolic and diastolic blood pressure) of user, and recommending color and music according to emotional state of user for a user service in self-driving vehicle. The proposed system is designed to classify the four emotional information (stability, relaxation, tension, and excitement) by using EEG data to infer and classify emotional state according to user’s stress. SVM algorithm was used to classify bio information according to stress index using brain wave data of the fuzzy control system, pulse, and blood pressure data. When 80% of data were learned according to the ratio of training data by using the SVM algorithm to classify the EEG, blood pressure, and pulse rate databased on the biometric emotion information, the highest performance of 86.1% was shown. The bio-information classification system based on the stress index proposed in this paper will help to study the interaction between human and computer (HCI) in the 4th Industrial Revolution by classifying emotional color and emotional sound according to the emotion of the user it is expected.
机译:自驾驶车辆中的所有人都希望收到每项服务。要做到这一点,系统必须从情感或压力来了解该人的状态,并了解该人的国家,它必须通过分析该人的生物信息来捕获。在本文中,我们提出了一种用于使用EEG,脉冲,血压(收缩压和舒张压)的用户的系统,以及根据用户在自行车车辆中的用户服务的情绪状态推断出颜色和音乐。所提出的系统旨在通过使用EEG数据来分类四种情绪信息(稳定性,放松,张力和兴奋)来推断和根据用户的压力进行情绪状态。 SVM算法用于根据使用模糊控制系统,脉冲和血压数据的脑波数据根据应力指数对生物信息进行分类。当通过使用SVM算法将EEG,血压和脉冲速率进行分类到生物识别情绪信息上的训练数据的比率来学习80%的数据时,显示出86.1%的最高性能。基于本文提出的压力指数的生物信息分类系统将有助于通过根据预期的用户的情感来分类情绪颜色和情感声音来帮助研究第四届工业革命中的人与计算机(HCI)之间的互动。

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