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基于双层特征的彝语数据情感自动标注方法
引用本文:何俊,张彩庆,张云飞,张德海,李小珍.基于双层特征的彝语数据情感自动标注方法[J].计算机应用,2005,40(10):2850-2855.
作者姓名:何俊  张彩庆  张云飞  张德海  李小珍
作者单位:1. 昆明学院 信息工程学院, 昆明 650214;2. 云南大学 外国语学院, 昆明 650206;3. 云南大学 软件学院, 昆明 650206
基金项目:国家自然科学基金资助项目(61263043,61864004);云南省地方本科高校基础研究联合专项基金资助项目(2017FH001-058)。
摘    要:现有的情感自动标注方法大多仅从声学层或语言层提取单一识别特征,而彝语受分支方言多、复杂性高等因素的影响,对其使用单层情感特征进行自动标注的正确率较低。利用彝语情感词缀丰富等特点,提出一种双层特征融合方法,分别从声学层和语言层提取情感特征,采用生成序列和按需加入单元的方法完成特征序列对齐,最后通过相应的特征融合和自动标注算法来实现情感自动标注过程。以某扶贫日志数据库中的彝语语音和文本数据为样本,分别采用三种不同分类器进行对比实验。结果表明分类器对自动标注结果影响不明显,而双层特征融合后的自动标注正确率明显提高,正确率从声学层的48.1%和语言层的34.4%提高到双层融合的64.2%。

关 键 词:彝语    自动标注    情感识别    双层特征融合    扶贫
收稿时间:2020-02-17
修稿时间:2020-03-27

Automatic emotion annotation method of Yi language data based on double-layer features
HE Jun,ZHANG Caiqing,ZHANG Yunfei,ZHANG Dehai,LI Xiaozhen.Automatic emotion annotation method of Yi language data based on double-layer features[J].journal of Computer Applications,2005,40(10):2850-2855.
Authors:HE Jun  ZHANG Caiqing  ZHANG Yunfei  ZHANG Dehai  LI Xiaozhen
Affiliation:1. School of Information Engineering, Kunming University, Kunming Yunnan 650214, China;2. School of Foreign Languages, Yunnan University, Kunming Yunnan 650206, China;3. School of Software, Yunnan University, Kunming Yunnan 650206, China
Abstract:Most of the existing automatic emotion annotation methods only extract the single recognition feature from acoustic layer or language layer. While Yi language is affected by the factors such as too many branch dialects and high complexity, so the accuracy of automatic annotation of Yi language with single-layer emotion feature is low. Based on the features such as rich emotional affixes in Yi language, a double-layer feature fusion method was proposed. In the method, the emotional features from acoustic layer and language layer were extracted respectively, the methods of generating sequence and adding units as needed were applied to complete the feature sequence alignment, and the process of automatic emotion annotation was realized through the corresponding feature fusion and automatic annotation algorithm. Taking the speech and text data of Yi language in a poverty alleviation log database as samples, three different classifiers were used for comparative experiments. The results show that the classifier has no obvious effect on the automatic annotation results, and the accuracy of automatic annotation after the fusion of double-layer features is significantly improved, the accuracy is increased from 48.1% of acoustic layer and 34.4% of language layer to 64.2% of double-layer fusion.
Keywords:Yi language                                                                                                                        automatic annotation                                                                                                                        emotion recognition                                                                                                                        double-layer feature fusion                                                                                                                        poverty alleviation
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