Predictive models for music annotation tasks are practi-cally limited by a paucity of well-annotated training data. In the broader context of large-scale machine learning, the concept of “data augmentation ” — supplementing a train-ing set with carefully perturbed samples — has emerged as an important component of robust systems. In this work, we develop a general software framework for augmenting annotated musical datasets, which will allow practitioners to easily expand training sets with musically motivated per-turbations of both audio and annotations. As a proof of concept, we investigate the effects of data augmentation on the task of recognizing instruments in mixed signals. 1
*** Authors are temporarily hidden due to double blind review *** This dataset contains 3,000 artif...
Comunicació presentada a la 22a International Conference on Digital Audio Effects (DAFx-19) que se c...
publicationstatus: publishedpublicationstatus: publishedpublicationstatus: publishe
Supervised machine learning relies on the accessibility of large datasets of annotated data. This is...
Identifying musical instruments in a polyphonic music recording is a difficult yet crucial problem i...
Identifying musical instruments in a polyphonic music recording is a difficult yet crucial problem i...
The study of inter-annotator agreement in musical pattern annotations has gained increased attention...
In this work, we provide a broad comparative analysis of strategies for pre-training audio understan...
In the developing field of automatic sound recognition there exists a need for well-annotated traini...
Machine learning algorithms are the core components in a wide range of intelligent music production ...
An overview of several of the music-related projects at the Laboratory for Recognition and Organizat...
© Springer Nature Switzerland AG 2019. The size of publicly available music data sets has grown sign...
Machine learning algorithms are the core components in a wide range of intelligent music production ...
Comunicació presentada a la 22a International Conference on Digital Audio Effects (DAFx-19) que se c...
Machine learning algorithms are the core components in a wide range of intelligent music production ...
*** Authors are temporarily hidden due to double blind review *** This dataset contains 3,000 artif...
Comunicació presentada a la 22a International Conference on Digital Audio Effects (DAFx-19) que se c...
publicationstatus: publishedpublicationstatus: publishedpublicationstatus: publishe
Supervised machine learning relies on the accessibility of large datasets of annotated data. This is...
Identifying musical instruments in a polyphonic music recording is a difficult yet crucial problem i...
Identifying musical instruments in a polyphonic music recording is a difficult yet crucial problem i...
The study of inter-annotator agreement in musical pattern annotations has gained increased attention...
In this work, we provide a broad comparative analysis of strategies for pre-training audio understan...
In the developing field of automatic sound recognition there exists a need for well-annotated traini...
Machine learning algorithms are the core components in a wide range of intelligent music production ...
An overview of several of the music-related projects at the Laboratory for Recognition and Organizat...
© Springer Nature Switzerland AG 2019. The size of publicly available music data sets has grown sign...
Machine learning algorithms are the core components in a wide range of intelligent music production ...
Comunicació presentada a la 22a International Conference on Digital Audio Effects (DAFx-19) que se c...
Machine learning algorithms are the core components in a wide range of intelligent music production ...
*** Authors are temporarily hidden due to double blind review *** This dataset contains 3,000 artif...
Comunicació presentada a la 22a International Conference on Digital Audio Effects (DAFx-19) que se c...
publicationstatus: publishedpublicationstatus: publishedpublicationstatus: publishe