We consider two approaches for sparse decomposition of polyphonic music: a timedomain approach based on shift-invariant waveforms, and a frequency-domain approach based on phase-invariant power spectra. When trained on an example of a MIDI-controlled acoustic piano recording, both methods produce dictionary vectors or sets of vectors which represent underlying notes, and produce component activations related to the original MIDI score. The time-domain method is more computationally expensive, but produces sample-accurate spike-like activations and can be used for a direct time-domain reconstruction. The spectral domain method discards phase information, but is faster than the time-domain method and retains more higher-frequency harmonics. T...
In this paper, an Automatic Music Transcription (AMT) algorithm based on a supervised Non-negatve Ma...
In this paper we present a method for polyphonic music source separation from their monaural mixture...
Automatic music transcription (AMT) can be performed by deriving a pitch-time representation through...
We consider two approaches for sparse decomposition of polyphonic music: a time-domain approach base...
Abstract—We investigate a data-driven approach to the anal-ysis and transcription of polyphonic musi...
This paper investigates possible estimators of musical information in subregions of a time-frequency...
Abstract—The aim of this paper is to propose solutions to some problems that arise in automatic poly...
Redundancy reduction has been proposed as the main computational process in the primary sensory path...
This article presents new spectral analysis-synthesis approaches to musical signal transformation. T...
We introduce a new method for generating time-frequency distributions, which is particularly useful ...
Time-frequency representations are commonly used tools for the representation of audio and in partic...
Music transcription consists in transforming the musical content of audio data into a symbolic repr...
In order to perform many signal processing tasks such as classification, pattern recognition and cod...
In this paper, a new class of audio representations is introduced, together with a corresponding fas...
Abstract—This paper introduces a new music signal processing method to extract multiple fundamental ...
In this paper, an Automatic Music Transcription (AMT) algorithm based on a supervised Non-negatve Ma...
In this paper we present a method for polyphonic music source separation from their monaural mixture...
Automatic music transcription (AMT) can be performed by deriving a pitch-time representation through...
We consider two approaches for sparse decomposition of polyphonic music: a time-domain approach base...
Abstract—We investigate a data-driven approach to the anal-ysis and transcription of polyphonic musi...
This paper investigates possible estimators of musical information in subregions of a time-frequency...
Abstract—The aim of this paper is to propose solutions to some problems that arise in automatic poly...
Redundancy reduction has been proposed as the main computational process in the primary sensory path...
This article presents new spectral analysis-synthesis approaches to musical signal transformation. T...
We introduce a new method for generating time-frequency distributions, which is particularly useful ...
Time-frequency representations are commonly used tools for the representation of audio and in partic...
Music transcription consists in transforming the musical content of audio data into a symbolic repr...
In order to perform many signal processing tasks such as classification, pattern recognition and cod...
In this paper, a new class of audio representations is introduced, together with a corresponding fas...
Abstract—This paper introduces a new music signal processing method to extract multiple fundamental ...
In this paper, an Automatic Music Transcription (AMT) algorithm based on a supervised Non-negatve Ma...
In this paper we present a method for polyphonic music source separation from their monaural mixture...
Automatic music transcription (AMT) can be performed by deriving a pitch-time representation through...