© Springer Nature Switzerland AG 2019. The size of publicly available music data sets has grown significantly in recent years, which allows training better classification models. However, training on large data sets is time-intensive and cumbersome, and some training instances might be unrepresentative and thus hurt classification performance regardless of the used model. On the other hand, it is often beneficial to extend the original training data with augmentations, but only if they are carefully chosen. Therefore, identifying a “smart” selection of training instances should improve performance. In this paper, we introduce a novel, multi-objective framework for training set selection with the target to simultaneously minimise the number ...
Modern society has drastically changed the way it consumes music. During these last recent years, li...
The objective of the thesis is to develop techniques that optimize the performances of sound event d...
Very few large-scale music research datasets are publicly available. There is an increasing need for...
Predictive models for music annotation tasks are practi-cally limited by a paucity of well-annotated...
In this paper we present a method for the selection of training instances based on the classificatio...
Supervised machine learning relies on the accessibility of large datasets of annotated data. This is...
Deep learning models have recently led to significant improvements in a wide variety of tasks. Known...
Recently the ‘Million Song Dataset’, containing audio features and metadata for one million songs, w...
International audienceTraining a sound event detection algorithm on a heterogeneous dataset includin...
International audienceTraining a sound event detection algorithm on a heterogeneous dataset includin...
This paper presents a crowdsourcing-based self-improvement frame-work of vocal activity detection (V...
There exists a large number of supervised music classification tasks: Recognition of music genres an...
This paper targets on a generalized vocal mode classifier (speech/singing) that works on audio data ...
In this work, we provide a broad comparative analysis of strategies for pre-training audio understan...
This thesis focuses on presenting a technique on improving current vocal detection methods. One of t...
Modern society has drastically changed the way it consumes music. During these last recent years, li...
The objective of the thesis is to develop techniques that optimize the performances of sound event d...
Very few large-scale music research datasets are publicly available. There is an increasing need for...
Predictive models for music annotation tasks are practi-cally limited by a paucity of well-annotated...
In this paper we present a method for the selection of training instances based on the classificatio...
Supervised machine learning relies on the accessibility of large datasets of annotated data. This is...
Deep learning models have recently led to significant improvements in a wide variety of tasks. Known...
Recently the ‘Million Song Dataset’, containing audio features and metadata for one million songs, w...
International audienceTraining a sound event detection algorithm on a heterogeneous dataset includin...
International audienceTraining a sound event detection algorithm on a heterogeneous dataset includin...
This paper presents a crowdsourcing-based self-improvement frame-work of vocal activity detection (V...
There exists a large number of supervised music classification tasks: Recognition of music genres an...
This paper targets on a generalized vocal mode classifier (speech/singing) that works on audio data ...
In this work, we provide a broad comparative analysis of strategies for pre-training audio understan...
This thesis focuses on presenting a technique on improving current vocal detection methods. One of t...
Modern society has drastically changed the way it consumes music. During these last recent years, li...
The objective of the thesis is to develop techniques that optimize the performances of sound event d...
Very few large-scale music research datasets are publicly available. There is an increasing need for...