基于深度学习的语音情感分析构建模型

A. Dash, Roshni Pradhan, Jitendra Kumar Rout, N. Ray
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引用次数: 3

摘要

情感分析是一个引人入胜的研究领域,因为它在不同的领域具有广泛的意义。通过网络收集人们对产品、社会和政治事件和问题的意见正日益流行。用户的意见对公众和利益相关者在做出某些决策时是有帮助的。包含自发语音的自然音频流的自动情感分析是一个雄心勃勃的研究领域,但很少受到关注。因此,从语料库中挖掘和总结音频文本需要有效的抽象方法,这就需要了解语音中的情感词。有许多计算技术、模型和算法用于从非结构化文本中挖掘意见组件。在这项研究中,我们使用基于词典的方法MNB分类器和深度学习方法从自然语音中自动识别情感,并比较了它们的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Constructive Model for Sentiment Analysis of Speech using Deep Learning
Sentiment analysis is an engrossing and intriguing area of research because of its extensive significance in different domains. Assembling opinions of people about products, social and political events and problems through the Web is becoming progressively popular day by day. The views of users are helpful for the public and stakeholders when making certain decisiveness. Automatic sentiment analysis for natural audio streams containing spontaneous speech is an ambitious area of research that has accepted little attention. Accordingly, efficient abstract methods are required for mining and summarizing the audio-text from corpuses which, requires knowledge of sentiment-bearing words in speech. Many computational techniques, models and algorithms are there for mining opinion components from unstructured text. In this study, we have used lexicon-based approach MNB classifier and deep learning approach for automatic recognition of sentiment from natural speech and compare their results.
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