Deep learning networks have been successfully applied to solve a large number of tasks. The effectiveness of deep learning networks is limited by the amount and the variety of data used for the training. For this reason, deep-learning networks can be applied in scenarios where a huge amount of data are available. In music information retrieval, this is the case of popular genres due to the wider availability of annotated music pieces. Instead, to find sufficient and useful data is a hard task for non widespread genres, like, for instance, traditional and folk music. To address this issue, Transfer Learning has been proposed, i.e., to train a network using a large available dataset and then transfer the learned knowledge (the hierarchical re...
In music information retrieval (MIR), beat tracking is one of the most fundamental tasks. To obtain ...
We demonstrate two generative models created by traininga recurrent neural network (RNN) with three ...
Very few large-scale music research datasets are publicly available. There is an increasing need for...
Deep learning networks have been successfully applied to solve a large number of tasks. The effectiv...
Part 3: Big Data Analysis and Machine LearningInternational audienceModern music information retriev...
Inspired by the success of deploying deep learning in the fields of Computer Vision and Natural Lang...
The extraction of the beat from musical audio signals represents a foundational task in the field o...
Beat and downbeat tracking models have improved significantly in recent years with the introduction ...
This thesis presents applications of deep learning to three domains of sequential data; music, human...
Very few large-scale music research datasets are publicly available. There is an increasing need for...
Supervised machine learning for music information retrieval requires a large annotated training set,...
Downbeat tracking consists of annotating a piece of musical audio with the estimated position of the...
Similarity measures are indispensable in music information retrieval. In recent years, various propo...
The use of deep neural networks has exploded in popularity recently. Thinking that music information...
International audienceDownbeat tracking consists of annotating a piece of musical audio with the est...
In music information retrieval (MIR), beat tracking is one of the most fundamental tasks. To obtain ...
We demonstrate two generative models created by traininga recurrent neural network (RNN) with three ...
Very few large-scale music research datasets are publicly available. There is an increasing need for...
Deep learning networks have been successfully applied to solve a large number of tasks. The effectiv...
Part 3: Big Data Analysis and Machine LearningInternational audienceModern music information retriev...
Inspired by the success of deploying deep learning in the fields of Computer Vision and Natural Lang...
The extraction of the beat from musical audio signals represents a foundational task in the field o...
Beat and downbeat tracking models have improved significantly in recent years with the introduction ...
This thesis presents applications of deep learning to three domains of sequential data; music, human...
Very few large-scale music research datasets are publicly available. There is an increasing need for...
Supervised machine learning for music information retrieval requires a large annotated training set,...
Downbeat tracking consists of annotating a piece of musical audio with the estimated position of the...
Similarity measures are indispensable in music information retrieval. In recent years, various propo...
The use of deep neural networks has exploded in popularity recently. Thinking that music information...
International audienceDownbeat tracking consists of annotating a piece of musical audio with the est...
In music information retrieval (MIR), beat tracking is one of the most fundamental tasks. To obtain ...
We demonstrate two generative models created by traininga recurrent neural network (RNN) with three ...
Very few large-scale music research datasets are publicly available. There is an increasing need for...