46 research outputs found

    Emotion Recognition based on Multimodal Information

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    Towards Robust and Adaptive Speech Recognition Models

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    Integrating Language Identification to improve Multilingual Speech Recognition

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    The process of determining the language of a speech utterance is called Language Identification (LID). This task can be very challenging as it has to take into account various language-specific aspects, such as phonetic, phonotactic, vocabulary and grammar-related cues. In multilingual speech recognition we try to find the most likely word sequence that corresponds to an utterance where the language is not known a priori. This is a considerably harder task compared to monolingual speech recognition and it is common to use LID to estimate the current language. In this project we present two general approaches for LID and describe how to integrate them into multilingual speech recognizers. The first approach uses hierarchical multilayer perceptrons to estimate language posterior probabilities given the acoustics in combination with hidden Markov models. The second approach evaluates the output of a multilingual speech recognizer to determine the spoken language. The research is applied to the MediaParl speech corpus that was recorded at the Parliament of the canton of Valais, where people switch from Swiss French to Swiss German or vice versa. Our experiments show that, on that particular data set, LID can be used to significantly improve the performance of multilingual speech recognizers. We will also point out that ASR dependent LID approaches yield the best performance due to higher-level cues and that our systems perform much worse on non-native dat

    Tuning-Robust Initialization Methods for Speaker Diarization

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    This paper investigates a typical speaker diarization system regarding its robustness against initialization parameter variation and presents a method to reduce manual tuning of these values significantly. The behavior of an agglomerative hierarchical clustering system is studied to determine which initialization parameters impact accuracy most. We show that the accuracy of typical systems is indeed very sensitive to the values chosen for the initialization parameters and factors such as the duration of speech in the recording. We then present a solution that reduces the sensitivity of the initialization values and therefore reduces the need for manual tuning significantly while at the same time increasing the accuracy of the system. For short meetings extracted from the previous (2006, 2007, and 2009) National Institute of Standards and Technology (NIST) Rich Transcription (RT) evaluation data, the decrease of the diarization error rate is up to 50% relative. The approach consists of a novel initialization parameter estimation method for speaker diarization that uses agglomerative clustering with Bayesian information criterion (BIC) and Gaussian mixture models (GMMs) of frame-based cepstral features (MFCCs). The estimation method balances the relationship between the optimal value of the seconds of speech data per Gaussian and the duration of the speech data and is combined with a novel nonuniform initialization method. This approach results in a system that performs better than the current ICSI baseline engine on datasets of the NIST RT evaluations of the years 2006, 2007, and 2009

    Discriminative features for GMM and i-vector based speaker diarization

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    Speaker diarization has received several research attentions over the last decade. Among the different domains of speaker diarization, diarization in meeting domain is the most challenging one. It usually contains spontaneous speech and is, for example, susceptible to reverberation. The appropriate selection of speech features is one of the factors that affect the performance of speaker diarization systems. Mel Frequency Cepstral Coefficients (MFCC) are the most widely used short-term speech features in speaker diarization. Other factors that affect the performance of speaker diarization systems are the techniques employed to perform both speaker segmentation and speaker clustering. In this thesis, we have proposed the use of jitter and shimmer long-term voice-quality features both for Gaussian Mixture Modeling (GMM) and i-vector based speaker diarization systems. The voice-quality features are used together with the state-of-the-art short-term cepstral and long-term speech ones. The long-term features consist of prosody and Glottal-to-Noise excitation ratio (GNE) descriptors. Firstly, the voice-quality, prosodic and GNE features are stacked in the same feature vector. Then, they are fused with cepstral coefficients at the score likelihood level both for the proposed Gaussian Mixture Modeling (GMM) and i-vector based speaker diarization systems. For the proposed GMM based speaker diarization system, independent HMM models are estimated from the short-term and long-term speech feature sets. The fusion of the short-term descriptors with the long-term ones in speaker segmentation is carried out by linearly weighting the log-likelihood scores of Viterbi decoding. In the case of speaker clustering, the fusion of the short-term cepstral features with the long-term ones is carried out by linearly fusing the Bayesian Information Criterion (BIC) scores corresponding to these feature sets. For the proposed i-vector based speaker diarization system, the speaker segmentation is carried out exactly the same as in the previously mentioned GMM based speaker diarization system. However, the speaker clustering technique is based on the recently introduced factor analysis paradigm. Two set of i-vectors are extracted from the speaker segmentation hypothesis. Whilst the first i-vector is extracted from short-term cepstral features, the second one is extracted from the voice quality, prosody and GNE descriptors. Then, the cosine-distance and Probabilistic Linear Discriminant Analysis (PLDA) scores of i-vectors are linearly weighted to obtain a fused similarity score. Finally, the fused score is used as speaker clustering distance. We have also proposed the use of delta dynamic features for speaker clustering. The motivation for using deltas in clustering is that delta dynamic features capture the transitional characteristics of the speech signal which contain speaker specific information. This information is not captured by the static cepstral coefficients. The delta features are used together with the short-term static cepstral coefficients and long-term speech features (i.e., voice-quality, prosody and GNE) both for GMM and i-vector based speaker diarization systems. The experiments have been carried out on Augmented Multi-party Interaction (AMI) meeting corpus. The experimental results show that the use of voice-quality, prosody, GNE and delta dynamic features improve the performance of both GMM and i-vector based speaker diarization systems.La diarizaci贸n del altavoz ha recibido varias atenciones de investigaci贸n durante la 煤ltima d茅cada. Entre los diferentes dominios de la diarizaci贸n del hablante, la diarizaci贸n en el dominio del encuentro es la m谩s dif铆cil. Normalmente contiene habla espont谩nea y, por ejemplo, es susceptible de reverberaci贸n. La selecci贸n apropiada de las caracter铆sticas del habla es uno de los factores que afectan el rendimiento de los sistemas de diarizaci贸n de los altavoces. Los Coeficientes Cepstral de Frecuencia Mel (MFCC) son las caracter铆sticas de habla de corto plazo m谩s utilizadas en la diarizaci贸n de los altavoces. Otros factores que afectan el rendimiento de los sistemas de diarizaci贸n del altavoz son las t茅cnicas empleadas para realizar tanto la segmentaci贸n del altavoz como el agrupamiento de altavoces. En esta tesis, hemos propuesto el uso de jitter y shimmer caracter铆sticas de calidad de voz a largo plazo tanto para GMM y i-vector basada en sistemas de diarizaci贸n de altavoces. Las caracter铆sticas de calidad de voz se utilizan junto con el estado de la t茅cnica a corto plazo cepstral y de larga duraci贸n de habla. Las caracter铆sticas a largo plazo consisten en la prosodia y los descriptores de relaci贸n de excitaci贸n Glottal-a-Ruido (GNE). En primer lugar, las caracter铆sticas de calidad de voz, pros贸dica y GNE se apilan en el mismo vector de caracter铆sticas. A continuaci贸n, se fusionan con coeficientes cepstrales en el nivel de verosimilitud de puntajes tanto para los sistemas de diarizaci贸n de altavoces basados 驴驴en el modelo Gaussian Mixture Modeling (GMM) como en los sistemas basados 驴驴en i-vector. . Para el sistema de diarizaci贸n de altavoces basado en GMM propuesto, se calculan modelos HMM independientes a partir de cada conjunto de caracter铆sticas. En la segmentaci贸n de los altavoces, la fusi贸n de los descriptores a corto plazo con los de largo plazo se lleva a cabo mediante la ponderaci贸n lineal de las puntuaciones log-probabilidad de decodificaci贸n Viterbi. En la agrupaci贸n de altavoces, la fusi贸n de las caracter铆sticas cepstrales a corto plazo con las de largo plazo se lleva a cabo mediante la fusi贸n lineal de las puntuaciones Bayesian Information Criterion (BIC) correspondientes a estos conjuntos de caracter铆sticas. Para el sistema de diarizaci贸n de altavoces basado en un vector i, la fusi贸n de caracter铆sticas se realiza exactamente igual a la del sistema basado en GMM antes mencionado. Sin embargo, la t茅cnica de agrupaci贸n de altavoces se basa en el paradigma de an谩lisis de factores recientemente introducido. Dos conjuntos de i-vectores se extraen de la hip贸tesis de segmentaci贸n de altavoz. Mientras que el primer vector i se extrae de caracter铆sticas espectrales a corto plazo, el segundo se extrae de los descriptores de calidad de voz apilados, pros贸dicos y GNE. A continuaci贸n, las puntuaciones de coseno-distancia y Probabilistic Linear Discriminant Analysis (PLDA) entre i-vectores se ponderan linealmente para obtener una puntuaci贸n de similitud fundida. Finalmente, la puntuaci贸n fusionada se utiliza como distancia de agrupaci贸n de altavoces. Tambi茅n hemos propuesto el uso de caracter铆sticas din谩micas delta para la agrupaci贸n de locutores. La motivaci贸n para el uso de deltas en la agrupaci贸n es que las caracter铆sticas din谩micas delta capturan las caracter铆sticas de transici贸n de la se帽al de voz que contienen informaci贸n espec铆fica del locutor. Esta informaci贸n no es capturada por los coeficientes cepstrales est谩ticos. Las caracter铆sticas delta se usan junto con los coeficientes cepstrales est谩ticos a corto plazo y las caracter铆sticas de voz a largo plazo (es decir, calidad de voz, prosodia y GNE) tanto para sistemas de diarizaci贸n de altavoces basados en GMM como en sistemas i-vector. Los resultados experimentales sobre AMI muestran que el uso de calidad vocal, pros贸dica, GNE y din谩micas delta mejoran el rendimiento de los sistemas de diarizaci贸n de altavoces basados en GMM e i-vector.Postprint (published version
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