An Efficient Algorithm for Automatic Peak Detection in Noisy Periodic and Quasi-Periodic Signals
Open Access
- 21 November 2012
- journal article
- research article
- Published by MDPI AG in Algorithms
- Vol. 5 (4), 588-603
- https://doi.org/10.3390/a5040588
Abstract
We present a new method for automatic detection of peaks in noisy periodic and quasi-periodic signals. The new method, called automatic multiscale-based peak detection (AMPD), is based on the calculation and analysis of the local maxima scalogram, a matrix comprising the scale-dependent occurrences of local maxima. The usefulness of the proposed method is shown by applying the AMPD algorithm to simulated and real-world signals.Keywords
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