A Review on Speech Emotion Recognition Using Machine Learning

Abstract

This paper focuses on the development of a robust speech emotion recognition system using a combination of different speech features with feature optimization techniques and speech de-noising technique to acquire improved emotion classification accuracy, decreasing the system complexity and obtain noise robustness. Additionally, we create original methods for SER to merge features. We employ feature optimization methods that are based on the feature transformation and feature selection machine learning techniques in order to build SER. The following is a list of the upcoming events. A neural network can use either of these two techniques. As more feelings are taken into account, the feature fusion-acquired SER accuracy falls short of expectations, and the plague of dimensionality starts to spread due to the addition of speech features, which makes the SER system work harder to complete its task. This is due to the SER system becoming more complicated when voice elements are added. Therefore, it is crucial to create a SER system that is more trustworthy, has the most practical features, and uses the least amount of computing power possible. By using strategies that maximize current features, it is possible to streamline the feature selection process by reducing the total number of accessible choices to a more reasonable level. This piece employs a method known as Semi-Non Negative Matrix Factorization to lessen the amount of processing trash that the SER system generates. (Semi-NMF). This approach can be used to change traits that are capable of learning on their own.

Authors and Affiliations

Sk. Mohammed Jubear, D. Pavan Kumar Reddy, G. Subramanyam, Sk. Farooq, T Sreenivasulu, N. Srinivasa Rao

Keywords

Related Articles

EEG-Based Multi-Class Emotion Recognition using Hybrid LSTM Approach

Emotion recognition is a crucial task in human-computer interaction, psychology, and neuroscience. Electroencephalogram (EEG)-based multi-class emotion recognition is a novel approach that aims to identify and classify h...

Evaluating Median Accuracy of ResNet50 and VGG16 Models in COVID-19 Detection

The increasing number of Covid-19 cases and the lack of reliable, quick-to-use testing tools herald a new era in X-ray analysis employing deep learning methods. The Covid-19 virus's emergence poses a threat to human exis...

An Improved Quality Enhancement Fingerprint Analysis

The use of fingerprint authentication as a biometric technique for secure authentication and access control has gained significant traction in recent years. This article presents an overview of the technology used for fi...

Pollution Abatement of Devika and Tawi River at Udhampur Town

In India, rapid industrialization & socio-economic adjustments have caused an accelerated urban boom. However, up-gradation & implementation of the vital infrastructure has no longer kept tempo with the developing urban...

Revitalizing Infrastructure: Assessing Concrete Jacketing for Reinforced Concrete Column Rehabilitation

The rehabilitation of deteriorating civil engineering infrastructure, encompassing bridges, buildings, columns, beams, supporting beams, marine structures, and roads, presents a formidable challenge in contemporary engin...

Download PDF file
  • EP ID EP746452
  • DOI 10.55524/ijircst.2022.10.3.65
  • Views 10
  • Downloads 0

How To Cite

Sk. Mohammed Jubear, D. Pavan Kumar Reddy, G. Subramanyam, Sk. Farooq, T Sreenivasulu, N. Srinivasa Rao (2022). A Review on Speech Emotion Recognition Using Machine Learning. International Journal of Innovative Research in Computer Science and Technology, 10(3), -. https://europub.co.uk/articles/-A-746452