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首页> 外文期刊>The international arab journal of information technology >Emotion Recognition based on EEG Signals in Response to Bilingual Music Tracks
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Emotion Recognition based on EEG Signals in Response to Bilingual Music Tracks

机译:基于EEG信号的情感识别响应双语音乐轨道

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摘要

Emotions are vital for communication in daily life and their recognition is important in the field of artificial intelligence. Music help evoking human emotions and brain signals can effectively describe human emotions. This study utilized Electroencephalography (EEG) signals to recognize four different emotions namely happy, sad, anger, and relax in response to bilingual (English and Urdu) music. Five genres of English music (rap, rock, hip-hop, metal, and electronic) and five genres of Urdu music (ghazal, qawwali, famous, melodious, and patriotic) are used as an external stimulus. Twenty-seven participants consensually took part in this experiment and listened to three songs of two minutes each and also recorded self-assessments. Muse four-channel headband is used for EEG data recording that is commercially available. Frequency and time-domain features are fused to construct the hybrid feature vector that is further used by classifiers to recognize emotional response. It has been observed that hybrid features gave better results than individual domains while the most common and easily recognizable emotion is happy. Three classifiers namely Multilayer Perceptron (MLP), Random Forest, and Hyper Pipes have been used and the highest accuracy achieved is 83.95% with Hyper Pipes classification method.
机译:情绪对日常生活中的沟通至关重要,他们的认可在人工智能领域很重要。音乐帮助唤起人类的情绪和大脑信号可以有效地描述人类的情绪。本研究利用了脑电图(EEG)信号来识别四种不同的情绪,即快乐,悲伤,愤怒,以应对双语(英语和乌尔都语)音乐。五种英语音乐(RAP,Rock,Hop,Metal和Electronic)和五种乌尔都语音乐(Ghazal,Qawwali,着名,悠扬,爱国)用作外部刺激。二十七名参与者在这个实验中开始参与其中,并听取了每次两分钟的三首歌曲,还记录了自我评估。 Muse四通道头带用于商业上可用的EEG数据记录。频率和时域特征融合以构建分类器进一步使用的混合特征向量来识别情绪响应。已经观察到混合特征比个体域更好地产生了更好的结果,而最常见且易于识别的情绪是快乐的。已经使用了三个分类器,使用了多层植物(MLP),随机林和超管,实现的最高精度为83.95%,带有超管分类方法。

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