waveletcentered
Waveletcentered is a term used to describe methodological approaches and software workflows that place wavelet transforms at the center of signal and data analysis. It encompasses techniques built around decomposing data into multiscale components using discrete or continuous wavelet transforms, enabling time-frequency localization, denoising, compression, and feature extraction.
At the heart is the selection of a mother wavelet and decomposition level to capture meaningful patterns
Applications span audio processing, image and video compression, biomedical signal analysis (ECG, EEG), geophysical data interpretation,
Advantages include multiresolution analysis, good localization in time and frequency, and efficiency for sparse representations. Limitations
There are software implementations that support wavelet-centered workflows, including libraries for wavelet transforms and thresholding. Conceptually,