Published as IEEE Transactions on Geoscience and Remote Sensin, 63, 1-9, Art no. 5902809, (2025)

Fast Streaming Local Time-frequency Transform for Nonstationary Seismic Data Processing

Jiawei Chen% latex2html id marker 3987
\setcounter{footnote}{1}\fnsymbol{footnote}, Yang Liu% latex2html id marker 3988
\setcounter{footnote}{1}\fnsymbol{footnote}, You Tian% latex2html id marker 3989
\setcounter{footnote}{1}\fnsymbol{footnote}, and Peihong Xie% latex2html id marker 3990
\setcounter{footnote}{1}\fnsymbol{footnote}
% latex2html id marker 3986
\setcounter{footnote}{1}\fnsymbol{footnote}College of Geo-exploration Science and Technology,
Jilin University, Changchun, China


Abstract:

Time-frequency analysis serves as a useful approach to solve different complex problems in seismic data processing. From a practical standpoint, the majority of time-frequency transform techniques frequently grapple with the trade-off between time and frequency localization adaptability, flexibility in sampling time and frequency, and the pursuit of computational efficiency. To address this, we tailor the streaming computation to implement a fast time-frequency transform, namely the streaming local time-frequency transform (SLTFT), which can significantly decrease the computational cost of adaptive time-frequency analysis. We add a localization scalar to the proceeding streaming algorithm to circumvent the need for taper functions, which provides rapid forward and inverse transforms and applicability in various scenarios. We demonstrate the adaptive time-frequency characteristics of the proposed method, which offers a nonstationary time-frequency representation with variable time-frequency localization. Numerical tests indicate that the proposed SLTFT is a more balanced method compared to previous time-frequency adaptive transforms. It proves suitable for a range of practical applications in nonstationary seismic data processing, including ground-roll attenuation, inverse-Q filtering, and multicomponent data registration.




2025-09-10