Speech Emotion Recognition Using Deep Sparse Auto-Encoder Extreme Learning Machine with a New Weighting Scheme and Spectro-Temporal Features Along with Classical Feature Selection and A New Quantum-Inspired Dimension Reduction Method
Fatemeh Daneshfar, Seyed Jahanshah Kabudian

TL;DR
This paper presents a comprehensive speech emotion recognition system that combines advanced feature extraction, quantum-inspired feature reduction, and a deep sparse auto-encoder classifier, effectively addressing data imbalance and improving recognition accuracy.
Contribution
It introduces a novel quantum-inspired feature reduction technique, a new weighting scheme for class imbalance, and integrates these with a deep sparse auto-encoder for improved speech emotion recognition.
Findings
Effective reduction of feature dimensionality using quantum-inspired method.
Improved classification accuracy on standard emotional datasets.
Enhanced handling of class imbalance with a new weighting scheme.
Abstract
Affective computing is very important in the relationship between man and machine. In this paper, a system for speech emotion recognition (SER) based on speech signal is proposed, which uses new techniques in different stages of processing. The system consists of three stages: feature extraction, feature selection, and finally feature classification. In the first stage, a complex set of long-term statistics features is extracted from both the speech signal and the glottal-waveform signal using a combination of new and diverse features such as prosodic, spectral, and spectro-temporal features. One of the challenges of the SER systems is to distinguish correlated emotions. These features are good discriminators for speech emotions and increase the SER's ability to recognize similar and different emotions. This feature vector with a large number of dimensions naturally has redundancy. In…
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Taxonomy
TopicsMachine Learning and ELM · Face and Expression Recognition · Neural Networks and Applications
MethodsFeature Selection
