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Gestion de la variabilité morphologique pour la reconnaissance de gestes naturels à partir de données 3D / Addressing morphological variability for natural gesture recognition from 3D dataSorel, Anthony 06 December 2012 (has links)
La reconnaissance de mouvements naturels est de toute première importance dans la mise en oeuvre d’Interfaces Homme-Machine intelligentes et efficaces, utilisables de manière intuitive en environnement virtuel. En effet, elle permet à l’utilisateur d’agir de manière naturelle et au système de reconnaitre les mouvements corporel effectués tels qu’ils seraient perçu par un humain. Cette tâche est complexe, car elle demande de relever plusieurs défis : prendre en compte les spécificités du dispositif d’acquisition des données de mouvement, gérer la variabilité cinématique dans l’exécution du mouvement, et enfin gérer les différences morphologiques inter-individuelles, de sorte que les mouvements de tout nouvel utilisateur puissent être reconnus. De plus, de part la nature interactive des environnements virtuels, cette reconnaissancedoit pouvoir se faire en temps-réel, sans devoir attendre la fin du mouvement. La littérature scientifique propose de nombreuses méthodes pour répondre aux deux premiers défis mais la gestion de la variabilité morphologique est peu abordée. Dans cette thèse, nous proposons une description du mouvement permettant de répondre à cette problématique et évaluons sa capacité à reconnaitre les mouvements naturels d’un utilisateur inconnu. Enfin, nous proposons unenouvelle méthode permettant de tirer partie de cette représentation dans une reconnaissance précoce du mouvement / Recognition of natural movements is of utmost importance in the implementation of intelligent and effective Human-Machine Interfaces for virtual environments. It allows the user to behave naturally and the system to recognize its body movements in the same way a human might perceive it. This task is complex, because it addresses several challenges : take account of the specificities of the motion capture system, manage kinematic variability in motion performance, and finally take account of the morphological differences between individuals, so that actions of any new user can be recognized. Moreover, due to the interactive nature of virtual environments, this recognition must be achieved in real-time without waiting for the motion end. The literature offers many methods to meet the first two challenges. But the management of the morphological variability is not dealt. In this thesis, we propose a description of the movement to address this issue and we evaluate its ability to recognize the movements of an unknown user. Finally, we propose a new method to take advantage of this representation in early motion recognition
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SPEAKER AND GENDER IDENTIFICATION USING BIOACOUSTIC DATA SETSJose, Neenu 01 January 2018 (has links)
Acoustic analysis of animal vocalizations has been widely used to identify the presence of individual species, classify vocalizations, identify individuals, and determine gender. In this work automatic identification of speaker and gender of mice from ultrasonic vocalizations and speaker identification of meerkats from their Close calls is investigated. Feature extraction was implemented using Greenwood Function Cepstral Coefficients (GFCC), designed exclusively for extracting features from animal vocalizations. Mice ultrasonic vocalizations were analyzed using Gaussian Mixture Models (GMM) which yielded an accuracy of 78.3% for speaker identification and 93.2% for gender identification. Meerkat speaker identification with Close calls was implemented using Gaussian Mixture Models (GMM) and Hidden Markov Models (HMM), with an accuracy of 90.8% and 94.4% respectively. The results obtained shows these methods indicate the presence of gender and identity information in vocalizations and support the possibility of robust gender identification and individual identification using bioacoustic data sets.
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A Design of Speaker Dependent Mandarin Recognition SystemPan, Ruei-tsz 02 September 2005 (has links)
A Mandarin phrase recognition system based on MFCC, LPC scaled excitation, vowel model, hidden Markov model (HMM) and Viterbi algorithm is proposed in this thesis. HMM, which is broadly used in speech recognition at present, is adopted in the main structure of recognition. In order to speed up the recognition time, we take advantage of stability of vowels in Mandarin and incorporate with vowel class recognition in our system. For the speaker-dependent case, a single Mandarin phrase recognition can be accomplished within 1 seconds on average in the laboratory environment.
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Engineering system design for automated space weather forecast : designing automatic software systems for the large-scale analysis of solar data, knowledge extraction and the prediction of solar activities using machine learning techniquesAlomari, Mohammad Hani January 2009 (has links)
Coronal Mass Ejections (CMEs) and solar flares are energetic events taking place at the Sun that can affect the space weather or the near-Earth environment by the release of vast quantities of electromagnetic radiation and charged particles. Solar active regions are the areas where most flares and CMEs originate. Studying the associations among sunspot groups, flares, filaments, and CMEs is helpful in understanding the possible cause and effect relationships between these events and features. Forecasting space weather in a timely manner is important for protecting technological systems and human life on earth and in space. The research presented in this thesis introduces novel, fully computerised, machine learning-based decision rules and models that can be used within a system design for automated space weather forecasting. The system design in this work consists of three stages: (1) designing computer tools to find the associations among sunspot groups, flares, filaments, and CMEs (2) applying machine learning algorithms to the associations' datasets and (3) studying the evolution patterns of sunspot groups using time-series methods. Machine learning algorithms are used to provide computerised learning rules and models that enable the system to provide automated prediction of CMEs, flares, and evolution patterns of sunspot groups. These numerical rules are extracted from the characteristics, associations, and time-series analysis of the available historical solar data. The training of machine learning algorithms is based on data sets created by investigating the associations among sunspots, filaments, flares, and CMEs. Evolution patterns of sunspot areas and McIntosh classifications are analysed using a statistical machine learning method, namely the Hidden Markov Model (HMM).
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Contribution à l'estimation de la durée de vie résiduelle des systèmes en présence d'incertitudes / Estimation of the remaining useful life of systems in the presence of uncertaintiesDelmas, Adrien 08 April 2019 (has links)
La mise en place d’une politique de maintenance prévisionnelle est un défi majeur dans l’industrie qui tente de réduire le plus possible les frais relatifs à la maintenance. En effet, les systèmes sont de plus en plus complexes et demandent un suivi de plus en plus poussé afin de rester opérationnels et sécurisés. Une maintenance prévisionnelle nécessite d’une part d’évaluer l’état de dégradation des composants du système, et d’autre part de pronostiquer l’apparition future d’une panne. Plus précisément, il s’agit d’estimer le temps restant avant l’arrivée d’une défaillance, aussi appelé Remaining Useful Life ou RUL en anglais. L’estimation d’une RUL constitue un réel enjeu car la pertinence et l’efficacité des actions de maintenance dépendent de la justesse et de la précision des résultats obtenus. Il existe de nombreuses méthodes permettant de réaliser un pronostic de durée de vie résiduelle, chacune avec ses spécificités, ses avantages et ses inconvénients. Les travaux présentés dans ce manuscrit s’intéressent à une méthodologie générale pour estimer la RUL d’un composant. L’objectif est de proposer une méthode applicable à un grand nombre de cas et de situations différentes sans nécessiter de modification majeure. De plus, nous cherchons aussi à traiter plusieurs types d’incertitudes afin d’améliorer la justesse des résultats de pronostic. Au final, la méthodologie développée constitue une aide à la décision pour la planification des opérations de maintenance. La RUL estimée permet de décider de l’instant optimal des interventions nécessaires, et le traitement des incertitudes apporte un niveau de confiance supplémentaire dans les valeurs obtenues. / Predictive maintenance strategies can help reduce the ever-growing maintenance costs, but their implementation represents a major challenge. Indeed, it requires to evaluate the health state of the component of the system and to prognosticate the occurrence of a future failure. This second step consists in estimating the remaining useful life (RUL) of the components, in Other words, the time they will continue functioning properly. This RUL estimation holds a high stake because the precision and accuracy of the results will influence the relevance and effectiveness of the maintenance operations. Many methods have been developed to prognosticate the remaining useful life of a component. Each one has its own particularities, advantages and drawbacks. The present work proposes a general methodology for component RUL estimation. The objective i to develop a method that can be applied to many different cases and situations and does not require big modifications. Moreover, several types of uncertainties are being dealt With in order to improve the accuracy of the prognostic. The proposed methodology can help in the maintenance decision making process. Indeed, it is possible to select the optimal moment for a required intervention thanks to the estimated RUL. Furthermore, dealing With the uncertainties provides additional confidence into the prognostic results.
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An Analog Architecture for Auditory Feature Extraction and RecognitionSmith, Paul Devon 22 November 2004 (has links)
Speech recognition systems have been implemented using a wide range of signal processing techniques including
neuromorphic/biological inspired and Digital Signal Processing
techniques. Neuromorphic/biologically inspired techniques, such as silicon cochlea models, are based on fairly simple yet highly parallel computation and/or computational units. While the area of digital signal processing (DSP) is based on block transforms and statistical or error minimization methods.
Essential to each of these techniques is the first stage of
extracting meaningful information from the speech signal, which is known as feature extraction. This can be done using biologically inspired techniques such as silicon cochlea models, or techniques beginning with a model of speech production and then trying to separate the the vocal tract response from an excitation signal. Even within each of these approaches, there are multiple techniques including cepstrum filtering, which sits
under the class of Homomorphic signal processing, or techniques using FFT based predictive approaches. The underlying reality is there are multiple techniques that have attacked the problem in speech recognition but the problem is still far from being solved. The techniques that have shown to have the best recognition rates involve Cepstrum Coefficients for the feature extraction and Hidden-Markov Models to perform the pattern recognition.
The presented research develops an analog system based on
programmable analog array technology that can perform the initial stages of auditory feature extraction and recognition before passing information to a digital signal processor. The goal being a low power system that can be fully contained on one or more integrated circuit chips. Results show that it is
possible to realize advanced filtering techniques such as
Cepstrum Filtering and Vector Quantization in analog circuitry. Prior to this work, previous applications of analog signal processing have focused on vision, cochlea models, anti-aliasing filters and other single component uses. Furthermore, classic designs have looked heavily at utilizing op-amps as a basic core building block for these designs. This research also shows a novel design for a Hidden Markov Model (HMM) decoder utilizing circuits that take advantage of the inherent properties of subthreshold transistors and floating-gate technology to create low-power computational blocks.
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Discovering Discussion Activity Flows in an On-line Forum Using Data Mining TechniquesHsieh, Lu-shih 22 July 2008 (has links)
In the Internet era, more and more courses are taught through a course management system (CMS) or learning management system (LMS). In an asynchronous virtual learning environment, an instructor has the need to beware the progress of discussions in forums, and may intervene if ecessary in order to facilitate students¡¦ learning. This research proposes a discussion forum activity flow tracking system, called FAFT (Forum Activity Flow Tracer), to utomatically monitor the discussion activity flow of threaded forum postings in CMS/LMS. As CMS/LMS is getting popular in facilitating learning activities, the proposedFAFT can be used to facilitate instructors to identify students¡¦ interaction types in discussion forums.
FAFT adopts modern data/text mining techniques to discover the patterns of forum discussion activity flows, which can be used for instructors to facilitate the online learning activities. FAFT consists of two subsystems: activity classification (AC) and activity flow discovery (AFD). A posting can be perceived as a type of announcement, questioning, clarification, interpretation, conflict, or assertion. AC adopts a cascade model to classify various activitytypes of posts in a discussion thread. The empirical evaluation of the classified types from a repository of postings in earth science on-line courses in a senior high school shows that AC can effectively facilitate the coding rocess, and the cascade model can deal with the imbalanced distribution nature of discussion postings.
AFD adopts a hidden Markov model (HMM) to discover the activity flows. A discussion activity flow can be presented as a hidden Markov model (HMM) diagram that an instructor can adopt to predict which iscussion activity flow type of a discussion thread may be followed. The empirical results of the HMM from an online forum in earth science subject in a senior high school show that FAFT can effectively predict the type of a discussion activity flow. Thus, the proposed FAFT can be embedded in a course management system to automatically predict the activity flow type of a discussion thread, and in turn reduce the teachers¡¦ loads on managing online discussion forums.
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Estudo dimensional de características aplicadas à leitura labial automáticaMadureira, Fillipe Levi Guedes 31 August 2018 (has links)
Coordenação de Aperfeiçoamento de Pessoal de Nível Superior - CAPES / This work is a study of the relationship between the intrinsic dimension of feature vectors
applied to the classification of video signals in order to perform lip reading. In pattern
recognition tasks, the extraction of relevant features is crucial for a good performance
of the classifiers. The starting point of this work was the reproduction of the work of
J.R. Movellan [1], which classifies lips gestures with HMM using only the video signal
from the Tulips1 database. The database consists of videos of volunteers’ mouths while
they utter the first 4 numerals in English. The original work uses feature vectors of high
dimensionality in relation to the size of the database. Consequently, the adjustment of
HMM classifiers has become problematic and the maximum accuracy was only 66.67%.
Alternative strategies for feature extraction and classification schemes were proposed in
order to analyze the influence of the intrinsic dimension in the performance of classifiers.
The best solution, in terms of results, achieved an accuracy of approximately 83%. / Este trabalho é um estudo da relação entre a dimensão intrínseca de vetores de características
aplicados à classificação de sinais de vídeo no intuito de realizar-se a leitura
labial. Nas tarefas de reconhecimento de padrões, a extração de características relevantes
é crucial para um bom desempenho dos classificadores. O ponto de partida deste trabalho
foi a reprodução do trabalho de J.R. Movellan [1], que realiza a classificação de gestos
labiais com HMM na base de dados Tulips1, utilizando somente o sinal de vídeo. A base é
composta por vídeos das bocas de voluntários enquanto esses pronunciam os primeiros 4
numerais em inglês. O trabalho original utiliza vetores de características de dimensão muito
alta em relação ao tamanho da base. Consequentemente, o ajuste de classificadores HMM
se tornou problemático e só se alcançou 66,67% de acurácia. Estratégias de extração de
características e esquemas de classificação alternativos foram propostos, a fim de analisar
a influência da dimensão intrínseca no desempenho de classificadores. A melhor solução,
em termos de resultados, obteve uma acurácia de aproximadamente 83%. / São Cristóvão, SE
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Synergistic use of promoter prediction algorithms: A choice for small training dataset?Oppon, Ekow CruickShank January 2000 (has links)
Philosophiae Doctor - PhD / This chapter outlines basic gene structure and how gene structure is related to promoter structure in both prokaryotes and eukaryotes and their transcription machinery. An in-depth discussion is given on variations types of the promoters among both prokaryotes and
eukaryotes and as well as among three prokaryotic organisms namely, E.coli, B.subtilis and Mycobacteria with emphasis on Mituberculosis. The simplest definition that can be given for a promoter is: It is a segment of Deoxyribonucleic Acid (DNA) sequence located upstream of the 5' end of the gene where the RNA Polymerase enzyme binds prior to transcription (synthesis of RNA chain representative of one strand of the duplex DNA). However, promoters are more complex than defined above. For example, not all sequences upstream of genes can function as promoters even though they may have features similar to some known promoters (from section 1.2). Promoters are therefore specific sections of DNA sequences that are also recognized by specific proteins and therefore differ from other sections of DNA sequences that are
transcribed or translated. The information for directing RNA polymerase to the promoter has to be in section of DNA sequence defining the promoter region. Transcription in prokaryotes is initiated when the enzyme RNA polymerase forms a complex with sigma factors at the
promoter site. Before transcription, RNA polymerase must form a tight complex with the sigma/transcription factor(s) (figure 1.1). The 'tight complex' is then converted into an 'open complex' by melting of a short region of DNA within the sequence involved in the complex
formation. The final step in transcription initiation involves joining of first two nucleotides in a phosphodiester linkage (nascent RNA) followed by the release of sigma/transcription factors. RNA polymerase then continues with the transcription by making a transition from
initiation to elongation of the nascent transcript.
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Engineering System Design for Automated Space Weather Forecast. Designing Automatic Software Systems for the Large-Scale Analysis of Solar Data, Knowledge Extraction and the Prediction of Solar Activities Using Machine Learning Techniques.Alomari, Mohammad H. January 2009 (has links)
Coronal Mass Ejections (CMEs) and solar flares are energetic events taking
place at the Sun that can affect the space weather or the near-Earth environment by the
release of vast quantities of electromagnetic radiation and charged particles. Solar active
regions are the areas where most flares and CMEs originate. Studying the associations
among sunspot groups, flares, filaments, and CMEs is helpful in understanding the
possible cause and effect relationships between these events and features. Forecasting
space weather in a timely manner is important for protecting technological systems and
human life on earth and in space.
The research presented in this thesis introduces novel, fully computerised,
machine learning-based decision rules and models that can be used within a system
design for automated space weather forecasting. The system design in this work consists
of three stages: (1) designing computer tools to find the associations among sunspot
groups, flares, filaments, and CMEs (2) applying machine learning algorithms to the
associations¿ datasets and (3) studying the evolution patterns of sunspot groups using
time-series methods.
Machine learning algorithms are used to provide computerised learning rules
and models that enable the system to provide automated prediction of CMEs, flares, and
evolution patterns of sunspot groups. These numerical rules are extracted from the
characteristics, associations, and time-series analysis of the available historical solar
data. The training of machine learning algorithms is based on data sets created by
investigating the associations among sunspots, filaments, flares, and CMEs. Evolution
patterns of sunspot areas and McIntosh classifications are analysed using a statistical
machine learning method, namely the Hidden Markov Model (HMM).
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