Université Blida 1

Semi-Supervised learning for multi-label audio tagging

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dc.contributor.author Amrouche, Djamel Edinne
dc.contributor.author Allali, Adil
dc.date.accessioned 2022-03-13T09:58:13Z
dc.date.available 2022-03-13T09:58:13Z
dc.date.issued 2021
dc.identifier.uri http://di.univ-blida.dz:8080/jspui/handle/123456789/14627
dc.description ill., Bibliogr. fr_FR
dc.description.abstract Audio Tagging is concerned with the development of systems that are able to recognize sound events. A growing interest is geared towards audio tagging for various applications such as acoustic surveillance, tagging video content and environmental scene recognition. Our goal is to design an audio tagging system capable of recognizing a wide range of sound events. The development process usually requires a large set of labeled sound data. However, most existing datasets are unlabeled since hand-labeling is a very costly and a time-consuming process, and it involves a lot of manual labor. To mend with this, we have built our audio tagging system following the Semi-Supervised Learning (SSL) paradigm. Specifically, we have chosen the pseudo-labeling strategy to learn from weakly labeled data. In addition, our system trains a ResNet deep learning model on log-mel spectrograms, along with augmentation techniques to increase the dataset size. The training uses the cyclic cosine annealing technique for the learning rate. We have carried out our experiments on a huge dataset made of sound recordings; we have investigated the impact of the sharpening temperature (a hyperparameter of our system) on the distribution of the pseudo-labels, and have tested ensembling various variants of our approach. The results demonstrate the efficacy of pseudo-labeling SSL strategy. Furthermore, ensembling various systems significantly boosts the overall performance. Keywords: Audio Tagging, Semi-Supervised Learning, Feature Extraction, Deep Learning, Ensemble Learning, Statistical Tests. fr_FR
dc.language.iso en fr_FR
dc.publisher Université Blida 1 fr_FR
dc.subject Audio Tagging fr_FR
dc.subject Semi-Supervised Learning fr_FR
dc.subject Feature Extraction fr_FR
dc.subject Deep Learning fr_FR
dc.subject Ensemble Learning fr_FR
dc.subject Statistical Tests fr_FR
dc.title Semi-Supervised learning for multi-label audio tagging fr_FR
dc.type Thesis fr_FR


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