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Harmony search for feature selection in speech emotion recognition

机译:语音情感识别中特征选择的和谐搜索

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Feature selection is a significant aspect of speech emotion recognition system. How to select a small subset out of the thousands of speech data is important for accurate classification of speech emotion. In this paper we investigate heuristic algorithm Harmony search (HS) for feature selection. We extract 3 feature sets, including MFCC, Fourier Parameters (FP), and features extracted with The Munich open Speech and Music Interpretation by Large Space Extraction (openSMILE) toolkit, from Berlin German emotion database (EMODB) and Chinese Elderly emotion database (EESDB). And combine MFCC with FP as the fourth feature set. We use Harmony search to select subsets and decrease the dimension space, and employ 10-fold cross validation in LIBSVM to evaluate the change of accuracy between selected subsets and original sets. Experimental results show that each subset's size reduced by about 50%, however, there is no sharp degeneration on accuracy and the accuracy almost maintains the original ones.
机译:特征选择是语音情感识别系统的重要方面。如何从成千上万的语音数据中选择一小部分对于语音情感的准确分类很重要。在本文中,我们研究了用于特征选择的启发式算法和谐搜索(HS)。我们从柏林德国情感数据库(EMODB)和中国老年人情感数据库(EESDB)中提取了3个特征集,包括MFCC,傅立叶参数(FP),以及通过慕尼黑开放语音和音乐大空间提取(openSMILE)工具包提取的特征。 )。并将MFCC与FP组合为第四功能集。我们使用Harmony搜索来选择子集并减少维空间,并在LIBSVM中采用10倍交叉验证来评估所选子集和原始集之间准确性的变化。实验结果表明,每个子集的大小减少了约50%,但是,准确性没有急剧下降,并且准确性几乎保持了原始大小。

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