1995 International Conference on Acoustics, Speech, and Signal Processing
DOI: 10.1109/icassp.1995.479721
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A kernel based system for the estimation of non-stationary signals

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Cited by 2 publications
(2 citation statements)
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“…Choi and Williams [17] introduced a distribution that uses an exponential kernel for reducing cross-terms suffer from smearing in the representation. This distribution was still found to be less efficient with ref- Costa et al [20], Amin et al [21] and Jemili et al [22] proposed certain TF representations using exponential kernels, modified comb filters and wavelet function respectively. These schemes aimed at obtaining better signal localization.…”
Section: Review Of the State-of-the-art In Tfd Designmentioning
confidence: 97%
“…Choi and Williams [17] introduced a distribution that uses an exponential kernel for reducing cross-terms suffer from smearing in the representation. This distribution was still found to be less efficient with ref- Costa et al [20], Amin et al [21] and Jemili et al [22] proposed certain TF representations using exponential kernels, modified comb filters and wavelet function respectively. These schemes aimed at obtaining better signal localization.…”
Section: Review Of the State-of-the-art In Tfd Designmentioning
confidence: 97%
“…Choi and Williams [17] introduced a distribution that uses an exponential kernel for reducing cross-terms suffer from smearing in the representation. This distribution was still found to be less efficient with ref- Costa et al [20], Amin et al [21] and Jemili et al [22] proposed certain TF representations using exponential kernels, modified comb filters and wavelet function respectively. These schemes aimed at obtaining better signal localization.…”
Section: Review Of the State-of-the-art In Tfd Designmentioning
confidence: 97%