利用极端机器学习进行语音情感识别

Valli Madhavi Koti, Krishna Murthy, M. Suganya, Meduri Sridhar Sarma, Gollakota V S S Seshu Kumar, Balamurugan N
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摘要

从口语中检测情感(SER)是一项检测口语中潜在情感的任务。这是一项极具挑战性的任务,因为情感是主观的,而且与语境高度相关。机器学习算法已被广泛用于 SER,高斯混合模型 (GMM) 算法就是其中之一。GMM 算法是一种统计模型,它将随机变量的概率分布表示为高斯分布之和。它已被广泛用于语音识别和分类任务。在本文中,我们提供了一种使用极端机器学习(EML)和 GMM 算法的 SER 方法。EML 是机器学习的一种类型,它利用随机化以较低的计算成本达到较高的准确度。它已被有效地应用于各种分类任务中。计划中的方法包括两个步骤:特征提取和情感分类。为了提取特征,使用了旋律频率倒频谱系数(MFCC)。MFCC 通常用于语音处理,代表语音信号的频谱包络。GMM 算法用于情感分类。输入特征被建模为高斯混合物,根据输入特征属于每个高斯的可能性对情绪进行分类。在柏林情感语音数据库(EMO-DB)上对所建议的方法进行了测量,准确率达到 74.33%。总之,所建议的使用 EML 和 GMM 算法的 SER 方法显示出良好的效果。这是一种计算效率高、效果好的 SER 方法,可用于各种应用,如虚拟助理的语音情感检测、呼叫中心分析和心理治疗中的情感分析。
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Speech Emotion Recognition using Extreme Machine Learning
Detecting Emotion from Spoken Words (SER) is the task of detecting the underlying emotion in spoken language. It is a challenging task, as emotions are subjective and highly contextual. Machine learning algorithms have been widely used for SER, and one such algorithm is the Gaussian Mixture Model (GMM) algorithm. The GMM algorithm is a statistical model that represents the probability distribution of a random variable as a sum of Gaussian distributions. It has been widely used for speech recognition and classification tasks. In this article, we offer a method for SER using Extreme Machine Learning (EML) with the GMM algorithm. EML is a type of machine learning that uses randomization to achieve high accuracy at a low computational cost. It has been effectively utilised in various classification tasks. For the planned approach includes two steps: feature extraction and emotion classification. Cepstral Coefficients of Melody Frequency (MFCCs) are used in order to extract features. MFCCs are commonly used for speech processing and represent the spectral envelope of the speech signal. The GMM algorithm is used for emotion classification. The input features are modelled as a mixture of Gaussians, and the emotion is classified based on the likelihood of the input features belonging to each Gaussian. Measurements were taken of the suggested method on the The Berlin Database of Emotional Speech (EMO-DB) and achieved an accuracy of 74.33%. In conclusion, the proposed approach to SER using EML and the GMM algorithm shows promising results. It is a computationally efficient and effective approach to SER and can be used in various applications, such as speech-based emotion detection for virtual assistants, call centre analytics, and emotional analysis in psychotherapy.
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