Published September 23, 2018 | Version v1
Conference paper Open

Jazz Solo Instrument Classification with Convolutional Neural Networks, Source Separation, and Transfer Learning

Description

Predominant instrument recognition in ensemble recordings remains a challenging task, particularly if closelyrelated instruments such as alto and tenor saxophone need to be distinguished. In this paper, we build upon a recentlyproposed instrument recognition algorithm based on a hybrid deep neural network: a combination of convolutional and fully connected layers for learning characteristic spectral-temporal patterns. We systematically evaluate harmonic/percussive and solo/accompaniment source separation algorithms as pre-processing steps to reduce the overlap among multiple instruments prior to the instrument recognition step. For the particular use-case of solo instrument recognition in jazz ensemble recordings, we further apply transfer learning techniques to fine-tune a previously trained instrument recognition model for classifying six jazz solo instruments. Our results indicate that both source separation as pre-processing step as well as transfer learning clearly improve recognition performance, especially for smaller subsets of highly similar instruments.

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