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      Particle Filtering for PLCA model with Application to Music Transcription

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          Abstract

          Automatic Music Transcription (AMT) consists in automatically estimating the notes in an audio recording, through three attributes: onset time, duration and pitch. Probabilistic Latent Component Analysis (PLCA) has become very popular for this task. PLCA is a spectrogram factorization method, able to model a magnitude spectrogram as a linear combination of spectral vectors from a dictionary. Such methods use the Expectation-Maximization (EM) algorithm to estimate the parameters of the acoustic model. This algorithm presents well-known inherent defaults (local convergence, initialization dependency), making EM-based systems limited in their applications to AMT, particularly in regards to the mathematical form and number of priors. To overcome such limits, we propose in this paper to employ a different estimation framework based on Particle Filtering (PF), which consists in sampling the posterior distribution over larger parameter ranges. This framework proves to be more robust in parameter estimation, more flexible and unifying in the integration of prior knowledge in the system. Note-level transcription accuracies of 61.8 \(\%\) and 59.5 \(\%\) were achieved on evaluation sound datasets of two different instrument repertoires, including the classical piano (from MAPS dataset) and the marovany zither, and direct comparisons to previous PLCA-based approaches are provided. Steps for further development are also outlined.

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          Weak convergence and optimal scaling of random walk Metropolis algorithms

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              Multipitch Estimation of Piano Sounds Using a New Probabilistic Spectral Smoothness Principle

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                Author and article information

                Journal
                2017-03-28
                Article
                1703.09772
                94bc8b1c-2989-4481-8a56-12a55657b38b

                http://arxiv.org/licenses/nonexclusive-distrib/1.0/

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                stat.ML

                Machine learning
                Machine learning

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