Traditionally, speech emotion recognition (SER) research has relied on manually handcrafted acoustic features using feature engineering. However, the design of handcrafted features for complex SER tasks requires significant manual effort, which impedes generalisability and slows the pace of innovation. This has motivated the adoption of representation learning techniques that can automatically learn an intermediate representation of the input signal without any manual feature engineering. Representation learning has led to improved SER performance and enabled rapid innovation. Its effectiveness has further increased with advances in deep learning (DL), which has facilitated deep representation learning where hierarchical representations are...
Speech Emotion Recognition (SER) makes it possible for machines to perceive affective information. O...
The paper investigates the architecture of deep neural networks for recognizing human emotions from ...
Self-supervised learning has recently been implemented widely in speech processing areas, replacing ...
Traditionally, speech emotion recognition (SER) research has relied on manually handcrafted acoustic...
Traditionally, speech emotion recognition (SER) research has relied on manually handcrafted acoustic...
Speech Emotion Recognition (SER) poses a significant challenge with promising applications in psycho...
Emotion Speech Recognition (ESR) is recognizing the formation and change of speaker’s emotional stat...
Emotion speech recognition is a developing field in machine learning. The main purpose of this field...
Emotion speech recognition is a developing field in machine learning. The main purpose of this field...
Automatically estimating a user’s emotional behaviour via speech contents and facial expressions pla...
Speech emotion classification is one of the most interesting and complicated problems in to-day's wo...
Speech emotion recognition is gaining significant importance in the domains of pattern recognition a...
In this thesis, we describe extensive experiments on the classification of emotions from speech usin...
The goal of the project is to detect the speaker's emotions while he or she speaks. Speech generated...
With the development of social media and human-computer interaction, video has become one of the mos...
Speech Emotion Recognition (SER) makes it possible for machines to perceive affective information. O...
The paper investigates the architecture of deep neural networks for recognizing human emotions from ...
Self-supervised learning has recently been implemented widely in speech processing areas, replacing ...
Traditionally, speech emotion recognition (SER) research has relied on manually handcrafted acoustic...
Traditionally, speech emotion recognition (SER) research has relied on manually handcrafted acoustic...
Speech Emotion Recognition (SER) poses a significant challenge with promising applications in psycho...
Emotion Speech Recognition (ESR) is recognizing the formation and change of speaker’s emotional stat...
Emotion speech recognition is a developing field in machine learning. The main purpose of this field...
Emotion speech recognition is a developing field in machine learning. The main purpose of this field...
Automatically estimating a user’s emotional behaviour via speech contents and facial expressions pla...
Speech emotion classification is one of the most interesting and complicated problems in to-day's wo...
Speech emotion recognition is gaining significant importance in the domains of pattern recognition a...
In this thesis, we describe extensive experiments on the classification of emotions from speech usin...
The goal of the project is to detect the speaker's emotions while he or she speaks. Speech generated...
With the development of social media and human-computer interaction, video has become one of the mos...
Speech Emotion Recognition (SER) makes it possible for machines to perceive affective information. O...
The paper investigates the architecture of deep neural networks for recognizing human emotions from ...
Self-supervised learning has recently been implemented widely in speech processing areas, replacing ...