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Novel favorite music classification using EEG-based optimal audio features selected via KDLPCCA

机译:使用通过KDLPCCA选择的基于EEG的最佳音频功能进行新颖的喜爱音乐分类

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This paper presents a novel method of favorite music classification using EEG-based optimal audio features. To select audio features related to user's music preference, our method utilizes a relationship between EEG features obtained from the user's EEG signals during listening to music and their corresponding audio features since EEG signals of human reflect his/her music preference. Specifically, cross-loadings, whose components denote the degree of the relationship, are calculated based on Kernel Discriminative Locality Preserving Canonical Correlation Analysis (KDLPCCA) which is newly derived in the proposed method. In contrast with standard CCA, KDLPCCA can consider (1) non-linear correlation, (2) class information and (3) local structures of input EEG and audio features, simultaneously. Therefore, KDLPCCA-based cross-loadings can reflect best correlation between the user's EEG and corresponding audio signals. Then an optimal set of audio features related to his/her music preference can be obtained by employing the cross-loadings as novel criteria for feature selection. Consequently, our method realizes favorite music classification successfully by using the EEG-based optimal audio features.
机译:本文提出了一种使用基于EEG的最佳音频特征对喜欢的音乐进行分类的新方法。为了选择与用户的音乐喜好有关的音频特征,由于人类的EEG信号反映了他/她的音乐喜好,因此我们的方法利用了在听音乐期间从用户的EEG信号获得的EEG特征与其相应的音频特征之间的关系。具体地,基于所提出的方法中新推导的核判别局部性保留典型相关分析(KDLPCCA),计算其分量表示关系程度的交叉载荷。与标准CCA相比,KDLPCCA可以同时考虑(1)非线性相关,(2)类信息和(3)输入EEG和音频特征的局部结构。因此,基于KDLPCCA的交叉加载可以反映用户的EEG与相应音频信号之间的最佳相关性。然后,可以通过使用交叉加载作为特征选择的新标准来获得与他/她的音乐喜好相关的一组最佳音频特征。因此,我们的方法通过使用基于EEG的最佳音频功能,成功实现了喜欢的音乐分类。

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