Multi-pitch estimation for polyphonic musical signals
نویسندگان
چکیده
Automatic Score Transcription goal is to achieve an score-like (notes pitches through time) representation from musical signals. Reliable pitch extraction methods for monophonic signals exist, but polyphonic signals are much more difficult, often ambiguous, to analyze. We propose a computationally efficient technique for automatic recognition of notes from a polyphonic signal. It looks for correctly shaped (magnitude and phase wise) peaks in a, time and frequency oversampled, multiscale decomposition of the signal. Peaks (partial candidates) get accepted/discarded by their match to the window spectrum shape and continuityacross-scale constraints. The final partial list builds a resharpened and equalized spectrum. Note candidates are found searching for harmonic patterns. Perceptual and source based rejection criteria help discard false notes, frame-by-frame. Slightly non-causal postprocessing uses continuity (across a <150 ms. observation time) to kill too short notes, fill in the gaps, and correct (sub)octave jumps.
منابع مشابه
Polyphonic Pitch Tracking Using Joint Bayesian Estimation of Multiple Frame Parameters
We present a novel approach to pitch estimation and note detection in polyphonic audio signals. We pose the problem in a Bayesian probabilistic framework, which allows us to incorporate prior knowledge about the nature of musical data into the model. We exploit the high correlation between model parameters in adjacent frames of data by explicitly modelling the frequency variation over time usin...
متن کاملBayesian Graphical Models for Polyphonic Pitch Tracking
Bayesian graphical models are a very flexible tool for the modelling of musical signals. They allow for an hierarchical model structure which can be used to represent structure at many different levels, from low level signal structure in terms of sinusoids to high level musical structure. The Bayesian framework allows for the incorporation of a priori information into the model and also forms a...
متن کاملMultiple Fundamental Frequency Extraction for Mirex
This extended abstract outlines an efficient approach for the extraction of multiple fundamental frequencies (F0) from polyphonic musical audio. The algorithm consists of three analysis steps. At first a multi-resolution spectral analysis is performed on the audio signal. Then, the most salient pitches are identified using a pitch extraction algorithm, which is designed to identify the predomin...
متن کاملBayesian analysis of polyphonic western tonal music.
This paper deals with the computational analysis of musical audio from recorded audio waveforms. This general problem includes, as subtasks, music transcription, extraction of musical pitch, dynamics, timbre, instrument identity, and source separation. Analysis of real musical signals is a highly ill-posed task which is made complicated by the presence of transient sounds, background interferen...
متن کاملRobust Multipitch Estimation for the Analysis and Manipulation of Polyphonic Musical Signals
A method for the estimation of the multiple pitches of concurrent musical sounds is described. Experimental data comprised sung vowels and the whole pitch range of 26 musical instruments. Multipitch estimation was performed at the level of a single time frame for random pitch and sound source combinations. Note error rates for mixtures ranging from one to six simultaneous sounds were 2.1 %, 2.4...
متن کامل