Author :
Lu, Yufeng ; Demirli, Ramazan ; Cardoso, Guilherme ; Saniie, Jafar
Author_Institution :
Dept. of Electr. & Comput. Eng., Illinois Inst. of Technol., Chicago, IL
Abstract :
In ultrasonic imaging systems, the patterns of detected echoes correspond to the shape, size, and orientation of the reflectors and the physical properties of the propagation path. However, these echoes often are overlapped due to closely spaced reflectors and/or microstructure scattering. The decomposition of these echoes is a major and challenging problem. Therefore, signal modeling and parameter estimation of the nonstationary ultrasonic echoes is critical for image analysis, target detection, arid object recognition. In this paper, a successive parameter estimation algorithm based on the chirplet transform is presented. The chirplet transform is used not only as a means for time-frequency representation, but also to estimate the echo parameters, including the amplitude, time-of-arrival, center frequency, bandwidth, phase, and chirp rate. Furthermore, noise performance analysis using the Cramer Rao lower bounds demonstrates that the parameter estimator based on the chirplet transform is a minimum variance and unbiased estimator for signal-to-noise ratio (SNR) as low as 2.5 dB. To demonstrate the superior time-frequency and parameter estimation performance of the chirplet decomposition, ultrasonic flaw echoes embedded in grain scattering, and multiple interfering chirplets emitted by a large, brown bat have been analyzed. It has been shown that the chirplet signal decomposition algorithm performs robustly, yields accurate echo estimation, and results in SNR enhancements. Numerical and analytical results show that the algorithm is efficient and successful in high-fidelity signal representation
Keywords :
acoustic signal processing; amplitude estimation; frequency estimation; phase estimation; time-frequency analysis; time-of-arrival estimation; transforms; ultrasonic scattering; Cramer Rao lower bounds; amplitude estimation; bandwidth estimation; center frequency estimation; chirp rate estimation; chirplet signal decomposition; chirplet transform; echo detection patterns; echo estimation; grain scattering; image analysis; microstructure scattering; minimum variance; multiple interfering chirplets; noise performance analysis; nonstationary ultrasonic echoes; object recognition; phase estimation; signal modeling; signal-to-noise ratio; successive parameter estimation algorithm; target detection; time-frequency representation; time-of-arrival estimation; ultrasonic flaw echoes; ultrasonic imaging systems; Chirp; Frequency estimation; Microstructure; Parameter estimation; Performance analysis; Shape; Signal resolution; Signal to noise ratio; Time frequency analysis; Ultrasonic imaging;
Journal_Title :
Ultrasonics, Ferroelectrics, and Frequency Control, IEEE Transactions on