In this paper, we investigate the problem of cross-corpus speech emotion recognition (SER), in which the training (source) and testing (target) speech samples belong to different corpora. This case thus leads to a feature distribution mismatch between the source and target speech samples. Hence, the performance of most existing SER methods drops sharply. To solve this problem, we propose a simple yet effective transfer subspace learning method called joint distribution implicitly aligned subspace learning (JIASL). The basic idea of JIASL is very straightforward, i.e., building an emotion discriminative and corpus invariant linear regression model under an implicit distribution alignment strategy. Following this idea, we first make use of th...
The absence of labeled samples limits the development of speech emotion recognition (SER). Data augm...
Despite the recent advancement in speech emotion recognition (SER) within a single corpus setting, t...
Despite the recent progress in speech emotion recognition (SER), state-of-the-art systems lack gener...
In this paper, we focus on a challenging, but interesting, task in speech emotion recognition (SER),...
In many practical applications, a speech emotion recognition model learned on a source (training) do...
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...
To solve the problem of feature distribution discrepancy in cross-corpus speech emotion recognition ...
The majority of existing speech emotion recognition research focuses on automatic emotion detection ...
An important research direction in speech technology is robust cross-corpus and cross-language emoti...
Pattern recognition tasks often face the situation that training data are not fully representative o...
Obtaining large, human labelled speech datasets to train models for emotion recognition is a notorio...
Obtaining large, human labelled speech datasets to train models for emotion recognition is a notorio...
To date, several methods have been explored for the challenging task of cross-language speech emotio...
For speech emotion datasets, it has been difficult to acquire large quantities of reliable data and ...
The absence of labeled samples limits the development of speech emotion recognition (SER). Data augm...
Despite the recent advancement in speech emotion recognition (SER) within a single corpus setting, t...
Despite the recent progress in speech emotion recognition (SER), state-of-the-art systems lack gener...
In this paper, we focus on a challenging, but interesting, task in speech emotion recognition (SER),...
In many practical applications, a speech emotion recognition model learned on a source (training) do...
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...
To solve the problem of feature distribution discrepancy in cross-corpus speech emotion recognition ...
The majority of existing speech emotion recognition research focuses on automatic emotion detection ...
An important research direction in speech technology is robust cross-corpus and cross-language emoti...
Pattern recognition tasks often face the situation that training data are not fully representative o...
Obtaining large, human labelled speech datasets to train models for emotion recognition is a notorio...
Obtaining large, human labelled speech datasets to train models for emotion recognition is a notorio...
To date, several methods have been explored for the challenging task of cross-language speech emotio...
For speech emotion datasets, it has been difficult to acquire large quantities of reliable data and ...
The absence of labeled samples limits the development of speech emotion recognition (SER). Data augm...
Despite the recent advancement in speech emotion recognition (SER) within a single corpus setting, t...
Despite the recent progress in speech emotion recognition (SER), state-of-the-art systems lack gener...