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A DFC taxonomy of Speech emotion recognition based on convolutional neural network from speech signal

机译:基于语音信号的卷积神经网络的语音情感识别DFC分类

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Speech is an efficient agent to explicit attitude and emotions via language. The crucial task for the researchers is to find out the emotions through the speech utterance and eliminating the noise from a raw speech data. The goal of this research paper is to explore the latest journal papers in the field of convolutional neural network-based speech emotion recognition (SER) models related with the specific problem and provide a best solution which can recognize emotion in the speech from the speech signal.The components of this proposed system are data, feature extraction and classification (DFC) that helps to assist in the implementation and evaluating the system. We propose the DFC taxonomy which will assist the end users in recognition of the emotion from the speech signal and making the artificial intelligence (AI) more robust by using convolutional neural network, facilitating a huge presence in the future system.The system evaluates a state-of-the-art model that is associated to the convolutional neural network-based speech emotion recognition which presents and validates the DFC components. Based on system completeness, system acceptance, and by classifying 30 state-of-the-art journal research papers in the domain, components are evaluated, verified and validated.The benefaction of this research paper is the critical analysis in the latest literature that are available on the convolutional neural network-based system which can recognize the emotion by extracting the features from the speech signal so that accurate recognition of emotion can be made. Also, highlighting the importance of DFC taxonomy.
机译:言语是一种高效的代理,通过语言明确态度和情感。研究人员的关键任务是通过语音话语来找出情绪,并消除来自原始语音数据的噪音。本研究文件的目标是探讨与特定问题相关的基于卷积神经网络的语音情感识别(SER)模型领域的最新杂志,并提供了一种最佳解决方案,可以在语音信号中识别语音中的情绪。该提出的系统的组成部分是数据,特征提取和分类(DFC),有助于协助实施和评估系统。我们提出了DFC分类法,它可以帮助最终用户认识到语音信号的情绪,并通过使用卷积神经网络使人工智能(AI)更加强大,便于在未来系统中的巨大存在。系统评估了一个状态-OF-与基于卷积神经网络的语音情感识别相关联的最新模型,其呈现并验证DFC组件。基于系统完整性,系统验收,以及分类域中的30个最先进的日志研究论文,进行了评估,验证和验证了组件。本研究论文的效益是最新文学的关键分析可在基于卷积神经网络的系统上可用,该系统可以通过从语音信号中提取特征来识别情绪,以便可以进行准确识别情绪。此外,突出了DFC分类法的重要性。

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