This paper proposes an active learning method to control a labeling process for efficient annotation of acoustic training material, which is used for training sound event classifiers. The proposed method performs K-medoids clustering over an initially unlabeled dataset, and medoids as local representatives, are presented to an annotator for manual annotation. The annotated label on a medoid propagates to other samples in its cluster for label prediction. After annotating the medoids, the annotation continues to the unexamined sounds with mismatched prediction results from two classifiers, a nearest-neighbor classifier and a model-based classifier, both trained with annotated data. The annotation on the segments with mismatched predictions a...
International audienceMuch audio content today is rendered as a static stereo mix: fundamentally a f...
Music annotation is an important research topic in the multimedia area. One of the challenges in mus...
This reports presents a novel semi-supervised feature learning process for classifying audio recordi...
This paper proposes a novel active learning method to save annotation effort when preparing material...
The objective of the thesis is to develop techniques that optimize the performances of sound event d...
Labeling audio material to train classifiers comes with a large amount of human labor. In this pape...
1. This paper presents an active learning framework for the classification of one-minute audio-recor...
Many applications of spoken-language systems can benefit from having access to annotations of prosod...
Coping with scarcity of labeled data is a common problem in sound classification tasks. Approaches f...
Audio classification tasks like speech recognition and acoustic scene analysis require substantial l...
In this paper, we study the use of soft labels to train a system for sound event detection (SED). So...
This thesis consists in the extension of the baseline system for Acoustic Scene Classification, deve...
International audienceThis paper proposes an overview of the latest advances and challenges in sound...
This project was primarily about exploring the use of real-world and noisy datasets for sound event ...
In this paper, we present a method called HODGEPODGE\footnotemark[1] for large-scale detection of so...
International audienceMuch audio content today is rendered as a static stereo mix: fundamentally a f...
Music annotation is an important research topic in the multimedia area. One of the challenges in mus...
This reports presents a novel semi-supervised feature learning process for classifying audio recordi...
This paper proposes a novel active learning method to save annotation effort when preparing material...
The objective of the thesis is to develop techniques that optimize the performances of sound event d...
Labeling audio material to train classifiers comes with a large amount of human labor. In this pape...
1. This paper presents an active learning framework for the classification of one-minute audio-recor...
Many applications of spoken-language systems can benefit from having access to annotations of prosod...
Coping with scarcity of labeled data is a common problem in sound classification tasks. Approaches f...
Audio classification tasks like speech recognition and acoustic scene analysis require substantial l...
In this paper, we study the use of soft labels to train a system for sound event detection (SED). So...
This thesis consists in the extension of the baseline system for Acoustic Scene Classification, deve...
International audienceThis paper proposes an overview of the latest advances and challenges in sound...
This project was primarily about exploring the use of real-world and noisy datasets for sound event ...
In this paper, we present a method called HODGEPODGE\footnotemark[1] for large-scale detection of so...
International audienceMuch audio content today is rendered as a static stereo mix: fundamentally a f...
Music annotation is an important research topic in the multimedia area. One of the challenges in mus...
This reports presents a novel semi-supervised feature learning process for classifying audio recordi...