We present the MTG-Jamendo Dataset, a new open dataset for music auto-tagging. It is built using music available at Jamendo under Creative Commons licenses and tags provided by content uploaders. The dataset contains over 55,000 full audio tracks with 195 tags from genre, instrument, and mood/theme categories. We provide elaborated data splits for researchers and report the performance of a simple baseline approach on five different sets of tags: genre, instrument, mood/theme, top-50, and overall. This repository contains metadata. For scripts and instructions on how to download and use the dataset please see the related GitHub repository. Citation If you use the MTG-Jamendo Dataset or part of it, please cite our ICML2019 ML4MD paper: B...
Recent advances in deep learning accelerated the development of content-based automatic music taggin...
Comunicació presentada a: Workshop Machine Learning for Audio Signal Processing at NIPS 2017 (ML4Aud...
Comunicació presentada a: 20th International Society for Music Information Retrieval Conference cele...
Comunicació presentada a: ML4MD Machine Learning for Music Discovery Workshop del congrés ICML2019 c...
One of the many challenges of machine learning are systems for automatic tagging of music, the compl...
Comunicació presentada a: 19th International Society for Music Information Retrieval Conference (ISM...
This paper presents the MusiClef data set, a multimodal data set of professionally annotated music. ...
Presentat a Machine Learning for Media Discovery Workshop, celebrat dins The 37th International Conf...
Automatic music tagging systems have once more gained relevance over the last years, not least throu...
The lack of data tends to limit the outcomes of deep learning research, particularly when dealing wi...
Music auto-tagging refers to automatically assigning seman-tic labels (tags) such as genre, mood and...
The dataset is composed of 15 contextual tags extracted based on user's usage through created playli...
This work has been accepted at the 23rd International Society for Music Information Retrieval Confer...
As music distribution has evolved form physical media to digital content, tens of millions of songs ...
Music libraries are constantly growing, often tagged in relation to its instrumentation or artist. A...
Recent advances in deep learning accelerated the development of content-based automatic music taggin...
Comunicació presentada a: Workshop Machine Learning for Audio Signal Processing at NIPS 2017 (ML4Aud...
Comunicació presentada a: 20th International Society for Music Information Retrieval Conference cele...
Comunicació presentada a: ML4MD Machine Learning for Music Discovery Workshop del congrés ICML2019 c...
One of the many challenges of machine learning are systems for automatic tagging of music, the compl...
Comunicació presentada a: 19th International Society for Music Information Retrieval Conference (ISM...
This paper presents the MusiClef data set, a multimodal data set of professionally annotated music. ...
Presentat a Machine Learning for Media Discovery Workshop, celebrat dins The 37th International Conf...
Automatic music tagging systems have once more gained relevance over the last years, not least throu...
The lack of data tends to limit the outcomes of deep learning research, particularly when dealing wi...
Music auto-tagging refers to automatically assigning seman-tic labels (tags) such as genre, mood and...
The dataset is composed of 15 contextual tags extracted based on user's usage through created playli...
This work has been accepted at the 23rd International Society for Music Information Retrieval Confer...
As music distribution has evolved form physical media to digital content, tens of millions of songs ...
Music libraries are constantly growing, often tagged in relation to its instrumentation or artist. A...
Recent advances in deep learning accelerated the development of content-based automatic music taggin...
Comunicació presentada a: Workshop Machine Learning for Audio Signal Processing at NIPS 2017 (ML4Aud...
Comunicació presentada a: 20th International Society for Music Information Retrieval Conference cele...