Abstract :
We consider a multidimensional parameter space formed by inner products of a parameterizable family of chirp functions with a signal under analysis. We propose the use of quadratic chirp functions (which we will call q-chirps for short), giving rise to a parameter space that includes both the time-frequency plane and the time-scale plane as 2-D subspaces. The parameter space contains a “time-frequency-scale volume” and thus encompasses both the short-time Fourier transform (as a slice along the time and frequency axes) and the wavelet transform (as a slice along the time and scale axes). In addition to time, frequency, and scale, there are two other coordinate axes within this transform space: shear in time (obtained through convolution with a q-chirp) and shear in frequency (obtained through multiplication by a q-chirp). Signals in this multidimensional space can be obtained by a new transform, which we call the “q-chirplet transform” or simply the “chirplet transform”. The proposed chirplets are generalizations of wavelets related to each other by 2-D affine coordinate transformations (translations, dilations, rotations, and shears) in the time-frequency plane, as opposed to wavelets, which are related to each other by 1-D affine coordinate transformations (translations and dilations) in the time domain only
Keywords :
Fourier transforms; chirp modulation; convolution; signal processing; signal representation; time-frequency analysis; wavelet transforms; 2-D affine coordinate transformations; 2-D subspaces; chirplet transform; convolution; dilations; multidimensional parameter space; multiplication; physical considerations; q-chirps; quadratic chirp functions; rotations; shear in frequency; shear in time; shears; short-time Fourier transform; signal analysis; signal processing; time-frequency plane; time-frequency-scale volume; time-scale plane; translations; wavelet transform; Chirp; Continuous wavelet transforms; Fourier transforms; Frequency estimation; Signal analysis; Signal processing; Speech analysis; Time frequency analysis; Wavelet domain; Wavelet transforms;