Emotional Expression Detection in Spoken Language Employing Machine Learning Algorithms
Mehrab Hosain, Most. Yeasmin Arafat, Gazi Zahirul Islam, Jia Uddin,, Md. Mobarak Hossain, Fatema Alam

TL;DR
This study employs machine learning algorithms on speech features extracted from datasets to classify emotions such as anger, sadness, and happiness, achieving notable accuracy improvements over existing methods.
Contribution
The paper introduces a novel approach combining spectral features, signal decomposition, and multiple ML models for emotion detection in speech, demonstrating enhanced accuracy.
Findings
Support Vector Machine achieved 67.7% accuracy on test data.
Ensemble model achieved 77.7% accuracy on training data.
Method outperforms existing emotion recognition techniques.
Abstract
There are a variety of features of the human voice that can be classified as pitch, timbre, loudness, and vocal tone. It is observed in numerous incidents that human expresses their feelings using different vocal qualities when they are speaking. The primary objective of this research is to recognize different emotions of human beings such as anger, sadness, fear, neutrality, disgust, pleasant surprise, and happiness by using several MATLAB functions namely, spectral descriptors, periodicity, and harmonicity. To accomplish the work, we analyze the CREMA-D (Crowd-sourced Emotional Multimodal Actors Data) & TESS (Toronto Emotional Speech Set) datasets of human speech. The audio file contains data that have various characteristics (e.g., noisy, speedy, slow) thereby the efficiency of the ML (Machine Learning) models increases significantly. The EMD (Empirical Mode Decomposition) is…
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Taxonomy
TopicsSpeech and Audio Processing · Emotion and Mood Recognition · Speech Recognition and Synthesis
MethodsTest
