Multi-pitch estimation via fast group sparse learning

Kronvall, Ted; Elvander, Filip; Adalbjörnsson, Stefan Ingi; Jakobsson, Andreas (2016-12-01). Multi-pitch estimation via fast group sparse learning 2016 24th European Signal Processing Conference (EUSIPCO), 1093 - 1097. 24th European Signal Processing Conference, EUSIPCO 2016. Budapest, Hungary: IEEE - Institute of Electrical and Electronics Engineers Inc.
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DOI:
Conference Proceeding/Paper | Published | English
Authors:
Kronvall, Ted ; Elvander, Filip ; Adalbjörnsson, Stefan Ingi ; Jakobsson, Andreas
Department:
Mathematical Statistics
Mathematics (Faculty of Engineering)
Statistical Signal Processing Group
Biomedical Modelling and Computation
Research Group:
Statistical Signal Processing Group
Biomedical Modelling and Computation
Abstract:
In this work, we consider the problem of multi-pitch estimation using sparse heuristics and convex modeling. In general, this is a difficult non-linear optimization problem, as the frequencies belonging to one pitch often overlap the frequencies belonging to other pitches, thereby causing ambiguity between pitches with similar frequency content. The problem is further complicated by the fact that the number of pitches is typically not known. In this work, we propose a sparse modeling framework using a generalized chroma representation in order to remove redundancy and lower the dictionary's block-coherency. The found chroma estimates are then used to solve a small convex problem, whereby spectral smoothness is enforced, resulting in the corresponding pitch estimates. Compared with previously published sparse approaches, the resulting algorithm reduces the computational complexity of each iteration, as well as speeding up the overall convergence.
Keywords:
Signal Processing ; Probability Theory and Statistics
ISBN:
978-0-9928-6265-7
ISSN:
2076-1465
LUP-ID:
b0b4b62c-08e2-42c4-9ed8-5ed83dd61c3d | Link: https://lup.lub.lu.se/record/b0b4b62c-08e2-42c4-9ed8-5ed83dd61c3d | Statistics

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