Self-supervised learning has steadily been gaining traction in recent years. In music information retrieval (MIR), one promising recent application of self-supervised learning is the CLMR framework (contrastive learning of musical representations). CLMR has shown good performance, achieving results on par with state-of-the-art end-to-end classification models, but it is strictly an encoding framework. It suffers the characteristic limitation of any encoder that it cannot explicitly combine multi-timescale information, whereas a characteristic feature of human audio perception is that we tend to perceive all frequencies simultaneously. To this end, we propose a generalization of CLMR that learns to extract and explicitly combine representati...
Many music information retrieval tasks involve the comparison of a symbolic score representation wit...
Chroma or pitch-class representations of audio recordings are an essential tool in music information...
Self-supervised learning technique is an under-explored topic for music audio due to the challenge o...
While deep learning has enabled great advances in many areas of music, labeled music datasets remain...
Inspired by the success of deploying deep learning in the fields of Computer Vision and Natural Lang...
Content-based music information retrieval tasks are typi-cally solved with a two-stage approach: fea...
Convolutional Neural Networks (CNN) have been applied to diverse machine learning tasks for differen...
Music recognition tools have been one of the primary research problems in music information retrieva...
MTL Music Representation dataset is the collection of 384 neural network that are trained on 8 learn...
Content-based music information retrieval tasks are typically solved with a two-stage approach: feat...
The paper presents a new compositional hierarchical model for robust music transcription. Its main f...
Recent work in music structure analysis has shown the potential of deep features to highlight the un...
Deep representation learning offers a powerful paradigm for mapping input data onto an organized emb...
International audienceRecent work in music structure analysis has shown the potential of deep featur...
Very few large-scale music research datasets are publicly available. There is an increasing need for...
Many music information retrieval tasks involve the comparison of a symbolic score representation wit...
Chroma or pitch-class representations of audio recordings are an essential tool in music information...
Self-supervised learning technique is an under-explored topic for music audio due to the challenge o...
While deep learning has enabled great advances in many areas of music, labeled music datasets remain...
Inspired by the success of deploying deep learning in the fields of Computer Vision and Natural Lang...
Content-based music information retrieval tasks are typi-cally solved with a two-stage approach: fea...
Convolutional Neural Networks (CNN) have been applied to diverse machine learning tasks for differen...
Music recognition tools have been one of the primary research problems in music information retrieva...
MTL Music Representation dataset is the collection of 384 neural network that are trained on 8 learn...
Content-based music information retrieval tasks are typically solved with a two-stage approach: feat...
The paper presents a new compositional hierarchical model for robust music transcription. Its main f...
Recent work in music structure analysis has shown the potential of deep features to highlight the un...
Deep representation learning offers a powerful paradigm for mapping input data onto an organized emb...
International audienceRecent work in music structure analysis has shown the potential of deep featur...
Very few large-scale music research datasets are publicly available. There is an increasing need for...
Many music information retrieval tasks involve the comparison of a symbolic score representation wit...
Chroma or pitch-class representations of audio recordings are an essential tool in music information...
Self-supervised learning technique is an under-explored topic for music audio due to the challenge o...