In this study we present our system for INTERSPEECH 2014 Computational Paralinguistics Challenge (ComParE 2014), Physical Load Sub-challenge (PLS). Our contribution is twofold. First, we propose using Low Level Descriptor (LLD) information as hints, so as to partition the feature space into meaningful subsets called views. We also show the virtue of commonly employed feature projections, such as Canoni-cal Correlation Analysis (CCA) and Local Fisher Discriminant Analysis (LFDA) as ranking feature selectors. Results indicate the superiority of multi-view feature reduction approach to its single-view counterpart. Moreover, the discriminative projec-tion matrices are observed to provide valuable information for feature selection, which general...
The Mel-Frequency Cepstral Coefficients (MFCC) and their derivatives are commonly used as acoustic f...
In this paper, the use of a specific metric as a feature selection step is investigated. The feature...
A central problem in machine learning is identifying a representative set of features from which to ...
In this thesis, we study the problem of learning a linear transformation of acoustic feature vectors...
The burgeoning field of computational paralinguistics deals with the ways in which spoken words are ...
Abstract. An analysis of acoustic features for a ternary cognitive load classification task and an a...
In this thesis, we study the problem of learning a linear transformation of acoustic feature vectors...
It has been previously shown that, when both acoustic and artic-ulatory training data are available,...
It has been previously shown that, when both acoustic and artic-ulatory training data are available,...
17th Annual Conference of the International-Speech-Communication-Association (INTERSPEECH 2016) -- S...
This paper presents an automatic speaker physical load recog-nition approach using posterior probabi...
Previous work has shown that acoustic features can be im-proved by unsupervised learning of transfor...
[1] Bharadwaj, Arora, Livescu, and Hasegawa-Johnson. Multi-view acoustic feature learning using arti...
We have recently proposed a new acoustic model based on prob-abilistic linear discriminant analysis ...
Abstract. [Purpose] Computational intelligence similar to pattern recognition is frequently confront...
The Mel-Frequency Cepstral Coefficients (MFCC) and their derivatives are commonly used as acoustic f...
In this paper, the use of a specific metric as a feature selection step is investigated. The feature...
A central problem in machine learning is identifying a representative set of features from which to ...
In this thesis, we study the problem of learning a linear transformation of acoustic feature vectors...
The burgeoning field of computational paralinguistics deals with the ways in which spoken words are ...
Abstract. An analysis of acoustic features for a ternary cognitive load classification task and an a...
In this thesis, we study the problem of learning a linear transformation of acoustic feature vectors...
It has been previously shown that, when both acoustic and artic-ulatory training data are available,...
It has been previously shown that, when both acoustic and artic-ulatory training data are available,...
17th Annual Conference of the International-Speech-Communication-Association (INTERSPEECH 2016) -- S...
This paper presents an automatic speaker physical load recog-nition approach using posterior probabi...
Previous work has shown that acoustic features can be im-proved by unsupervised learning of transfor...
[1] Bharadwaj, Arora, Livescu, and Hasegawa-Johnson. Multi-view acoustic feature learning using arti...
We have recently proposed a new acoustic model based on prob-abilistic linear discriminant analysis ...
Abstract. [Purpose] Computational intelligence similar to pattern recognition is frequently confront...
The Mel-Frequency Cepstral Coefficients (MFCC) and their derivatives are commonly used as acoustic f...
In this paper, the use of a specific metric as a feature selection step is investigated. The feature...
A central problem in machine learning is identifying a representative set of features from which to ...