Emotion Recognition in Speech Signals using MFCC and Mel-Spectrogram Analysis

P. Muthuvel, T. Jaswanth, S. Firoz, S. Sri, N. Mukhesh
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Abstract

In the domain of artificial intelligence, it’s becoming more crucial than ever to classify emotions from both text and speech (AI). In order to promote and enhance human-ma-chine interaction, it is essential to establish a broader frame-work for speech emotion recognition. Machines are currently unable to reliably classify human emotions, hence machine learning development models were created for this purpose. Many academics worldwide are attempting to improve the ac-curacy of emotion categorization systems. The two steps of this study’s creation of a speech emotion detection model are (I) tasked with managing and (ii) classification. The most pertinent feature subset was discovered using feature selection (FS). A wide variety of different vision -based paradigms were employed to address the growing demand for accurate emotion categorization all across the domain of ai technology, taking into account how crucial feature selection is. This study strategy for both the emotion categorization problem and the establishment of ml algorithms and deep learning methods. This same aforementioned work focuses on speech expression analysis & proposes a paradigm for bettering human-computer interaction through into the construction on prototype cognitive computing that categorizes feelings. The investigation aims to boost this same precision for eg in voice by applying methods for selecting features and now a spectrum different deep learning methodology, notably TensorFlow. A research also high-lights the contribution on component choice mostly in creation of powerful machine-learning algorithms towards feelings categorization.
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基于MFCC和mel谱图分析的语音信号情感识别
在人工智能领域,从文本和语音(AI)中分类情感变得比以往任何时候都更加重要。为了促进和加强人机交互,有必要建立一个更广泛的语音情感识别框架。机器目前无法可靠地对人类情感进行分类,因此为此目的创建了机器学习开发模型。世界上许多学者都在试图提高情绪分类系统的准确性。本研究创建语音情感检测模型的两个步骤是(I)负责管理和(ii)分类。使用特征选择(FS)发现最相关的特征子集。考虑到特征选择的重要性,采用了各种不同的基于视觉的范式来解决人工智能技术领域对准确情感分类日益增长的需求。本研究既针对情感分类问题,又建立了机器学习算法和深度学习方法。上述同样的工作侧重于语音表达分析,并提出了一个范例,通过构建对情感进行分类的原型认知计算来改善人机交互。该研究旨在通过应用选择特征的方法和现在不同的深度学习方法,特别是TensorFlow,来提高语音eg的同样精度。一项研究也强调了对组件选择的贡献,主要是在创建强大的机器学习算法来进行情感分类。
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