International audienceDeep convolutional networks (convnets) in the time-frequency domain can learn an accurate and fine-grained categorization of sounds. For example, in the context of music signal analysis, this categorization may correspond to a taxonomy of playing techniques: vibrato, tremolo, trill, and so forth. However, convnets lack an explicit connection with the neurophysiological underpinnings of musical timbre perception. In this article, we propose a data-driven approach to explain audio classification in terms of physical attributes in sound production. We borrow from current literature in "explainable AI" (XAI) to study the predictions of a convnet which achieves an almost perfect score on a challenging task: i.e., the classi...
We report on a study conducted to extend our knowledge about the process of gaining a mental represe...
This project started with the observation that we manage to recognize a song by listening to only a ...
International audienceUnderstanding how humans use auditory cues to interpret their surroundings is ...
Representations in the auditory cortex might be based on mechanisms similar to the visual ventral st...
International audienceAlthough extensively studied for many years, defining the timbre of musical so...
International audienceInstrumental playing techniques such as vibratos, glissandos, and trills often...
Music genre classification is one example of content-based analysis of music signals. Historically, ...
To investigate variations in the timbre space with regards to musical dynamics, convolutional neural...
International audienceHumans excel at using sounds to make judgements about their immediate environm...
Automatic music genre recognition helps to organize music collections and discover new music pieces....
This paper addresses musical sounds recognition produced by different instrument and focus on classi...
Music creation is typically composed of two parts: composing the musical score, and then performing ...
International audienceClassical timbre studies have modeled timbre as the integration of a limited n...
Previously, artificial neural networks have been used to capture only the informal properties of mus...
This paper addresses musical sounds recognition produced by different instrument and focus on classi...
We report on a study conducted to extend our knowledge about the process of gaining a mental represe...
This project started with the observation that we manage to recognize a song by listening to only a ...
International audienceUnderstanding how humans use auditory cues to interpret their surroundings is ...
Representations in the auditory cortex might be based on mechanisms similar to the visual ventral st...
International audienceAlthough extensively studied for many years, defining the timbre of musical so...
International audienceInstrumental playing techniques such as vibratos, glissandos, and trills often...
Music genre classification is one example of content-based analysis of music signals. Historically, ...
To investigate variations in the timbre space with regards to musical dynamics, convolutional neural...
International audienceHumans excel at using sounds to make judgements about their immediate environm...
Automatic music genre recognition helps to organize music collections and discover new music pieces....
This paper addresses musical sounds recognition produced by different instrument and focus on classi...
Music creation is typically composed of two parts: composing the musical score, and then performing ...
International audienceClassical timbre studies have modeled timbre as the integration of a limited n...
Previously, artificial neural networks have been used to capture only the informal properties of mus...
This paper addresses musical sounds recognition produced by different instrument and focus on classi...
We report on a study conducted to extend our knowledge about the process of gaining a mental represe...
This project started with the observation that we manage to recognize a song by listening to only a ...
International audienceUnderstanding how humans use auditory cues to interpret their surroundings is ...