The same speech sounds (phones) produced by different speakers can sometimes exhibit significant differences. Therefore, it is essential to use algorithms compensating these differences in ASR systems. Speaker clustering is an attractive solution to the compensation problem, as it does not require long utterances or high computational effort at the recognition stage. The report proposes a clustering method based solely on adaptation of UBM model weights. This solution has turned out to be effective even when using a very short utterance. The obtained improvement of frame recognition quality measured by means of frame error rate is over 5%. It is noteworthy that this improvement concerns all vowels, even though the clustering discussed in th...
I hereby declare that I am the sole author of this thesis. This is a true copy of the thesis, includ...
This paper presents an effective technique for clustering speech utterances based on their associate...
UnrestrictedSpeaker clustering refers to a process of classifying a set of input speech data (or spe...
We present an approach to cluster the training data for automatic speech recognition (ASR). A relati...
Abstract. In this paper a speaker adaptation methodology is proposed, which first automatically dete...
Speaker clustering is one of the major methods for speaker adaptation. MLLR (Maximum Likelihood Line...
In this paper, we motivate and define the domain adaptation challenge task for speaker recognition. ...
Abstract—Speaker clustering is an important step in multi-speaker detection tasks and its performanc...
In this paper, we present a novel speaker segmentation and clustering algorithm. The algorithm autom...
Conventional speaker recognition systems use the Universal Background Model (UBM) as an imposter for...
Speaker recognition deals with recognizing speakers by their speech. Most speaker recognition system...
This paper investigates the problem of automatically grouping unknown speech utterances based on the...
The objective of this overview is to summarize some of the well-known algorithms already studied and...
International audienceThe performance of speaker recognition system is highly dependent on the amoun...
The purpose of this study is to develop robust techniques for speaker segmentation and clustering wi...
I hereby declare that I am the sole author of this thesis. This is a true copy of the thesis, includ...
This paper presents an effective technique for clustering speech utterances based on their associate...
UnrestrictedSpeaker clustering refers to a process of classifying a set of input speech data (or spe...
We present an approach to cluster the training data for automatic speech recognition (ASR). A relati...
Abstract. In this paper a speaker adaptation methodology is proposed, which first automatically dete...
Speaker clustering is one of the major methods for speaker adaptation. MLLR (Maximum Likelihood Line...
In this paper, we motivate and define the domain adaptation challenge task for speaker recognition. ...
Abstract—Speaker clustering is an important step in multi-speaker detection tasks and its performanc...
In this paper, we present a novel speaker segmentation and clustering algorithm. The algorithm autom...
Conventional speaker recognition systems use the Universal Background Model (UBM) as an imposter for...
Speaker recognition deals with recognizing speakers by their speech. Most speaker recognition system...
This paper investigates the problem of automatically grouping unknown speech utterances based on the...
The objective of this overview is to summarize some of the well-known algorithms already studied and...
International audienceThe performance of speaker recognition system is highly dependent on the amoun...
The purpose of this study is to develop robust techniques for speaker segmentation and clustering wi...
I hereby declare that I am the sole author of this thesis. This is a true copy of the thesis, includ...
This paper presents an effective technique for clustering speech utterances based on their associate...
UnrestrictedSpeaker clustering refers to a process of classifying a set of input speech data (or spe...