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基于内置加速度计的定制智能手环的情绪识别

Emotion recognition based on customized smart bracelet with built-in accelerometer.

作者信息

Zhang Zhan, Song Yufei, Cui Liqing, Liu Xiaoqian, Zhu Tingshao

机构信息

School of Computer and Control Engineering, University of Chinese Academy of Sciences , Beijing , China.

Institute of Psychology, Chinese Academy of Sciences , Beijing , China.

出版信息

PeerJ. 2016 Jul 26;4:e2258. doi: 10.7717/peerj.2258. eCollection 2016.

Abstract

BACKGROUND

Recently, emotion recognition has become a hot topic in human-computer interaction. If computers could understand human emotions, they could interact better with their users. This paper proposes a novel method to recognize human emotions (neutral, happy, and angry) using a smart bracelet with built-in accelerometer.

METHODS

In this study, a total of 123 participants were instructed to wear a customized smart bracelet with built-in accelerometer that can track and record their movements. Firstly, participants walked two minutes as normal, which served as walking behaviors in a neutral emotion condition. Participants then watched emotional film clips to elicit emotions (happy and angry). The time interval between watching two clips was more than four hours. After watching film clips, they walked for one minute, which served as walking behaviors in a happy or angry emotion condition. We collected raw data from the bracelet and extracted a few features from raw data. Based on these features, we built classification models for classifying three types of emotions (neutral, happy, and angry).

RESULTS AND DISCUSSION

For two-category classification, the classification accuracy can reach 91.3% (neutral vs. angry), 88.5% (neutral vs. happy), and 88.5% (happy vs. angry), respectively; while, for the differentiation among three types of emotions (neutral, happy, and angry), the accuracy can reach 81.2%.

CONCLUSIONS

Using wearable devices, we found it is possible to recognize human emotions (neutral, happy, and angry) with fair accuracy. Results of this study may be useful to improve the performance of human-computer interaction.

摘要

背景

近年来,情感识别已成为人机交互领域的热门话题。如果计算机能够理解人类情感,它们就能更好地与用户进行交互。本文提出了一种利用内置加速度计的智能手环识别人类情感(中性、开心和愤怒)的新方法。

方法

在本研究中,共123名参与者被要求佩戴定制的内置加速度计的智能手环,该手环可跟踪并记录他们的运动。首先,参与者正常行走两分钟,这作为中性情绪状态下的行走行为。然后,参与者观看情感电影片段以引发情绪(开心和愤怒)。观看两个片段的时间间隔超过四小时。观看电影片段后,他们再行走一分钟,这作为开心或愤怒情绪状态下的行走行为。我们从手环收集原始数据,并从原始数据中提取了一些特征。基于这些特征,我们构建了用于对三种情绪类型(中性、开心和愤怒)进行分类的分类模型。

结果与讨论

对于二分类,分类准确率分别可达91.3%(中性对愤怒)、88.5%(中性对开心)和88.5%(开心对愤怒);而对于三种情绪类型(中性、开心和愤怒)之间的区分,准确率可达81.2%。

结论

通过使用可穿戴设备,我们发现能够以相当高的准确率识别人类情感(中性、开心和愤怒)。本研究结果可能有助于提高人机交互的性能。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/c76c/4974923/a03b38e0d0ce/peerj-04-2258-g001.jpg

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