In this manuscript, we consider structured machine learning problems and consider more precisely the ones involving sequential structure. In a first part, we consider the problem of similarity measure learning for two tasks where sequential structure is at stake: (i) the multivariate change-point detection and (ii) the time warping of pairs of time series. The methods generally used to solve these tasks rely on a similarity measure to compare timestamps. We propose to learn a similarity measure from fully labelled data, i.e., signals already segmented or pairs of signals for which the optimal time warping is known. Using standard structured prediction methods, we present algorithmically efficient ways for learning. We propose to use loss fu...
Recent work in music structure analysis has shown the potential of deep features to highlight the un...
Ce travail présente quelques contributions théoriques et pratiques à la prévision des suites arbitra...
cote interne IRCAM: Meudic03bNone / NoneNational audienceIn the context of pattern extraction from p...
In this manuscript, we consider structured machine learning problems and consider more precisely the...
Dans cette thèse nous nous intéressons à des problèmes d’apprentissage automatique dans le cadre de ...
International audienceIn this paper, we propose to learn a Mahalanobis distance to perform alignment...
The work presented in this thesis deals with repetitive structure inference from audio signal using ...
The notion of metric plays a key role in machine learning problems, such as classification, clusteri...
The work presented here tackles two different subjects in the wide thematic of how to build a numeri...
We describe an algorithm for finding approximate sequence similarity at all scales of interest, bein...
Cette thèse rend compte de travaux portant sur l’inférence de structures répétitives à partir du sig...
This thesis deals with automatic alignment of audio recordings with corresponding music scores. We s...
Similarity measures are indispensable in music information retrieval. In recent years, various propo...
This paper describes a supervised learning algorithm which optimizes a feature representation for te...
This thesis proposes novel computational methods of information geometry with real-time applications...
Recent work in music structure analysis has shown the potential of deep features to highlight the un...
Ce travail présente quelques contributions théoriques et pratiques à la prévision des suites arbitra...
cote interne IRCAM: Meudic03bNone / NoneNational audienceIn the context of pattern extraction from p...
In this manuscript, we consider structured machine learning problems and consider more precisely the...
Dans cette thèse nous nous intéressons à des problèmes d’apprentissage automatique dans le cadre de ...
International audienceIn this paper, we propose to learn a Mahalanobis distance to perform alignment...
The work presented in this thesis deals with repetitive structure inference from audio signal using ...
The notion of metric plays a key role in machine learning problems, such as classification, clusteri...
The work presented here tackles two different subjects in the wide thematic of how to build a numeri...
We describe an algorithm for finding approximate sequence similarity at all scales of interest, bein...
Cette thèse rend compte de travaux portant sur l’inférence de structures répétitives à partir du sig...
This thesis deals with automatic alignment of audio recordings with corresponding music scores. We s...
Similarity measures are indispensable in music information retrieval. In recent years, various propo...
This paper describes a supervised learning algorithm which optimizes a feature representation for te...
This thesis proposes novel computational methods of information geometry with real-time applications...
Recent work in music structure analysis has shown the potential of deep features to highlight the un...
Ce travail présente quelques contributions théoriques et pratiques à la prévision des suites arbitra...
cote interne IRCAM: Meudic03bNone / NoneNational audienceIn the context of pattern extraction from p...