Title :
Multiridge detection and time-frequency reconstruction
Author :
Carmona, René A. ; Hwang, Wen L. ; Torrésani, Bruno
Author_Institution :
Statistics & Oper. Res. Program, Princeton Univ., NJ, USA
fDate :
2/1/1999 12:00:00 AM
Abstract :
The ridges of the wavelet transform, the Gabor transform, or any time-frequency representation of a signal contain crucial information on the characteristics of the signal. Indeed, they mark the regions of the time-frequency plane where the signal concentrates most of its energy. We introduce a new algorithm to detect and identify these ridges. The procedure is based on an original form of Markov chain Monte Carlo algorithm especially adapted to the present situation. We show that this detection algorithm is especially useful for noisy signals with multiridge transforms. It is a common practice among practitioners to reconstruct a signal from the skeleton of a transform of the signal (i.e., the restriction of the transform to the ridges). After reviewing several known procedures, we introduce a new reconstruction algorithm, and we illustrate its efficiency on speech signals and its robustness and stability on chirps perturbed by synthetic noise at different SNRs
Keywords :
Markov processes; Monte Carlo methods; noise; signal detection; signal reconstruction; signal representation; speech processing; time-frequency analysis; wavelet transforms; Gabor transform; Markov chain Monte Carlo algorithm; SNR; chirps; detection algorithm; efficiency; multiridge detection; multiridge transforms; noisy signals; reconstruction algorithm; robustness; signal reconstruction; sonar signal; speech signals; stability; synthetic noise; time-frequency reconstruction; time-frequency signal representation; wavelet transform; Chirp; Detection algorithms; Monte Carlo methods; Noise robustness; Reconstruction algorithms; Robust stability; Skeleton; Speech enhancement; Time frequency analysis; Wavelet transforms;
Journal_Title :
Signal Processing, IEEE Transactions on