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Wavelet-based noise removal for biomechanical signals: a comparative study
85
Citations
17
References
2000
Year
Sharp TransientsKinesiologyEngineeringFiltering TechniqueWbnr TechniquesNumerical DifferentiationBiosignal ProcessingStructural Health MonitoringNoiseNoise ReductionBiomedical EngineeringWavelet-based Noise RemovalWavelet TheorySignal ProcessingWaveform AnalysisBiomedical Signal Analysis
The purpose of this paper is to present wavelet-based noise removal (WBNR) techniques to remove noise from biomechanical acceleration signals obtained from numerical differentiation of displacement data. Manual and semiautomatic methods were used to determine thresholds for both orthogonal and biorthogonal filters. This study also compares the performance of WBNR approaches with four automatic conventional noise removal techniques used in biomechanics. The conclusion of this work is that WBNR techniques are very effective in removing noise from differentiated signals with sharp transients while leaving these transients intact. For biomechanical signals with certain characteristics, WBNR techniques perform better than conventional methods, as indicated by quantitative merit measures.
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