Daniel Erro


2016

pdf bib
A Singing Voice Database in Basque for Statistical Singing Synthesis of Bertsolaritza
Xabier Sarasola | Eva Navas | David Tavarez | Daniel Erro | Ibon Saratxaga | Inma Hernaez
Proceedings of the Tenth International Conference on Language Resources and Evaluation (LREC'16)

This paper describes the characteristics and structure of a Basque singing voice database of bertsolaritza. Bertsolaritza is a popular singing style from Basque Country sung exclusively in Basque that is improvised and a capella. The database is designed to be used in statistical singing voice synthesis for bertsolaritza style. Starting from the recordings and transcriptions of numerous singers, diarization and phoneme alignment experiments have been made to extract the singing voice from the recordings and create phoneme alignments. This labelling processes have been performed applying standard speech processing techniques and the results prove that these techniques can be used in this specific singing style.

2014

pdf bib
New bilingual speech databases for audio diarization
David Tavarez | Eva Navas | Daniel Erro | Ibon Saratxaga | Inma Hernaez
Proceedings of the Ninth International Conference on Language Resources and Evaluation (LREC'14)

This paper describes the process of collecting and recording two new bilingual speech databases in Spanish and Basque. They are designed primarily for speaker diarization in two different application domains: broadcast news audio and recorded meetings. First, both databases have been manually segmented. Next, several diarization experiments have been carried out in order to evaluate them. Our baseline speaker diarization system has been applied to both databases with around 30% of DER for broadcast news audio and 40% of DER for recorded meetings. Also, the behavior of the system when different languages are used by the same speaker has been tested.

2012

pdf bib
Versatile Speech Databases for High Quality Synthesis for Basque
Iñaki Sainz | Daniel Erro | Eva Navas | Inma Hernáez | Jon Sanchez | Ibon Saratxaga | Igor Odriozola
Proceedings of the Eighth International Conference on Language Resources and Evaluation (LREC'12)

This paper presents three new speech databases for standard Basque. They are designed primarily for corpus-based synthesis but each database has its specific purpose: 1) AhoSyn: high quality speech synthesis (recorded also in Spanish), 2) AhoSpeakers: voice conversion and 3) AhoEmo3: emotional speech synthesis. The whole corpus design and the recording process are described with detail. Once the databases were collected all the data was automatically labelled and annotated. Then, an HMM-based TTS voice was built and subjectively evaluated. The results of the evaluation are pretty satisfactory: 3.70 MOS for Basque and 3.44 for Spanish. Therefore, the evaluation assesses the quality of this new speech resource and the validity of the automated processing presented.

pdf bib
Strategies to Improve a Speaker Diarisation Tool
David Tavarez | Eva Navas | Daniel Erro | Ibon Saratxaga
Proceedings of the Eighth International Conference on Language Resources and Evaluation (LREC'12)

This paper describes the different strategies used to improve the results obtained by an off-line speaker diarisation tool with the Albayzin 2010 diarisation database. The errors made by the system have been analyzed and different strategies have been proposed to reduce each kind of error. Very short segments incorrectly labelled and different appearances of one speaker labelled with different identifiers are the most common errors. A post-processing module that refines the segmentation by retraining the GMM models of the speakers involved has been built to cope with these errors. This post-processing module has been tuned with the training dataset and improves the result of the diarisation system by 16.4% in the test dataset.

pdf bib
Using an ASR database to design a pronunciation evaluation system in Basque
Igor Odriozola | Eva Navas | Inma Hernaez | Iñaki Sainz | Ibon Saratxaga | Jon Sánchez | Daniel Erro
Proceedings of the Eighth International Conference on Language Resources and Evaluation (LREC'12)

This paper presents a method to build CAPT systems for under resourced languages, as Basque, using a general purpose ASR speech database. More precisely, the proposed method consists in automatically determine the threshold of GOP (Goodness Of Pronunciation) scores, which have been used as pronunciation scores in phone-level. Two score distributions have been obtained for each phoneme corresponding to its correct and incorrect pronunciations. The distribution of the scores for erroneous pronunciation has been calculated inserting controlled errors in the dictionary, so that each changed phoneme has been randomly replaced by a phoneme from the same group. These groups have been obtained by means of a phonetic clustering performed using regression trees. After obtaining both distributions, the EER (Equal Error Rate) of each distribution pair has been calculated and used as a decision threshold for each phoneme. The results show that this method is useful when there is no database specifically designed for CAPT systems, although it is not as accurate as those specifically designed for this purpose.

2010

pdf bib
AhoTransf: A Tool for Multiband Excitation Based Speech Analysis and Modification
Ibon Saratxaga | Inmaculada Hernáez | Eva Navas | Iñaki Sainz | Iker Luengo | Jon Sánchez | Igor Odriozola | Daniel Erro
Proceedings of the Seventh International Conference on Language Resources and Evaluation (LREC'10)

In this paper we present AhoTransf, a tool that enables analysis, visualization, modification and synthesis of speech. AhoTransf integrates a speech signal analysis model with a graphical user interface to allow visualization and modification of the parameters of the model. The synthesis capability allows hearing the modified signal thus providing a quick way to understand the perceptual effect of the changes in the parameters of the model. The speech analysis/synthesis algorithm is based in the Multiband Excitation technique, but uses a novel phase information representation the Relative Phase Shift (RPS’s). With this representation, not only the amplitudes but also the phases of the harmonic components of the speech signal reveal their structured patterns in the visualization tool. AhoTransf is modularly conceived so that it can be used with different harmonic speech models.

pdf bib
Modified LTSE-VAD Algorithm for Applications Requiring Reduced Silence Frame Misclassification
Iker Luengo | Eva Navas | Igor Odriozola | Ibon Saratxaga | Inmaculada Hernaez | Iñaki Sainz | Daniel Erro
Proceedings of the Seventh International Conference on Language Resources and Evaluation (LREC'10)

The LTSE-VAD is one of the best known algorithms for voice activity detection. In this paper we present a modified version of this algorithm, that makes the VAD decision not taking into account account the estimated background noise level, but the signal to noise ratio (SNR). This makes the algorithm robust not only to noise level changes, but also to signal level changes. We compare the modified algorithm with the original one, and with three other standard VAD systems. The results show that the modified version gets the lowest silence misclassification rate, while maintaining a reasonably low speech misclassification rate. As a result, this algorithm is more suitable for identification tasks, such as speaker or emotion recognition, where silence misclassification can be very harmful. A series of automatic emotion identification experiments are also carried out, proving that the modified version of the algorithm helps increasing the correct emotion classification rate.