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  • Sparse Time-Frequency Analy...
    Liu, Naihao; Lei, Youbo; Liu, Rongchang; Yang, Yang; Wei, Tao; Gao, Jinghuai

    IEEE transactions on geoscience and remote sensing, 2023, Volume: 61
    Journal Article

    Time-frequency analysis (TFA) is widely used to describe local time-frequency (TF) features of seismic data. Among the commonly used TFA tools, sparse TFA (STFA) is an excellent one, which can obtain a TF spectrum with good readability. However, many STFA algorithms suffer from expensive calculation time and unavoidable prior knowledge, such as the iterative shrinkage-thresholding algorithm (ISTA) and the sparse reconstruction by separable approximation (SpaRSA). Inspired by the unrolled algorithm and its successful applications in signal processing, we propose a deep learning (DL)-based ISTA unrolled algorithm, which is named the sparse time-frequency analysis network (STFANet). The STFANet contains two parts, i.e., the sparse TF spectrum generator and the reconstruction module. The former learns how to transform a 1-D seismic signal from a large amount of unlabeled data into a 2-D sparse TF spectrum, which is implemented based on the proposed unrolled iterative dynamic shrinkage-thresholding (UIDST) algorithm. Note that the UIDST algorithm is carried out by using a simplified DL network. The latter serves as a physical constraint of model training to ensure that our generator obtains an accurate TF spectrum, which is actually an inverse TF transform. In this study, the traditional inverse short-time Fourier transform (STFT) is utilized in the reconstruction module. To test the effectiveness of the proposed model, we apply it to 3-D poststack field data. The results show that, compared with the traditional TFA tools, the STFANet can availably compute the TF spectrum with better readability, which benefits seismic attenuation delineation.