In many practical applications, a speech emotion recognition model learned on a source (training) domain but applied to a novel target (testing) domain degenerates even significantly due to the mismatch between the two domains. Aiming at learning a better speech emotion recognition model for the target domain, the paper investigates this interesting problem, i.e., unsupervised cross-corpus speech emotion recognition (SER), in which the training and testing speech signals come from two different speech emotion corpora. Meanwhile, the training speech signals are labeled, while the label information of the testing speech signals is entirely unknown. To deal with this problem, we propose a simple yet effective method called transfer subspace le...
Emotion Recognition is attracting the attention of the research community due to the multiple areas ...
Music and speech exhibit striking similarities in the communication of emotions in the acoustic doma...
For speech emotion datasets, it has been difficult to acquire large quantities of reliable data and ...
AbstractIn this paper, we investigate an interesting problem, i.e., unsupervised cross-corpus speech...
Abstract Speech emotion recognition (SER) is a hot topic in speech signal processing. When the train...
In this paper, we focus on a challenging, but interesting, task in speech emotion recognition (SER),...
In this paper, we investigate the problem of cross-corpus speech emotion recognition (SER), in which...
The majority of existing speech emotion recognition research focuses on automatic emotion detection ...
To solve the problem of feature distribution discrepancy in cross-corpus speech emotion recognition ...
Obtaining large, human labelled speech datasets to train models for emotion recognition is a notorio...
Abstract—In speech emotion recognition, training and test data used for system development usually t...
Obtaining large, human labelled speech datasets to train models for emotion recognition is a notorio...
Despite the recent progress in speech emotion recognition (SER), state-of-the-art systems lack gener...
Despite the recent advancement in speech emotion recognition (SER) within a single corpus setting, t...
Recent work in the area of automatic emotion recognition has leveraged a large amount of publicly av...
Emotion Recognition is attracting the attention of the research community due to the multiple areas ...
Music and speech exhibit striking similarities in the communication of emotions in the acoustic doma...
For speech emotion datasets, it has been difficult to acquire large quantities of reliable data and ...
AbstractIn this paper, we investigate an interesting problem, i.e., unsupervised cross-corpus speech...
Abstract Speech emotion recognition (SER) is a hot topic in speech signal processing. When the train...
In this paper, we focus on a challenging, but interesting, task in speech emotion recognition (SER),...
In this paper, we investigate the problem of cross-corpus speech emotion recognition (SER), in which...
The majority of existing speech emotion recognition research focuses on automatic emotion detection ...
To solve the problem of feature distribution discrepancy in cross-corpus speech emotion recognition ...
Obtaining large, human labelled speech datasets to train models for emotion recognition is a notorio...
Abstract—In speech emotion recognition, training and test data used for system development usually t...
Obtaining large, human labelled speech datasets to train models for emotion recognition is a notorio...
Despite the recent progress in speech emotion recognition (SER), state-of-the-art systems lack gener...
Despite the recent advancement in speech emotion recognition (SER) within a single corpus setting, t...
Recent work in the area of automatic emotion recognition has leveraged a large amount of publicly av...
Emotion Recognition is attracting the attention of the research community due to the multiple areas ...
Music and speech exhibit striking similarities in the communication of emotions in the acoustic doma...
For speech emotion datasets, it has been difficult to acquire large quantities of reliable data and ...