Surface conditions and economic factors restrict field geometries,
so seismic data acquisition typically obtains field data with
irregular spatial distribution, which can adversely affect the
subsequent data processing and interpretation. Therefore, data
interpolation techniques are used to convert field data into
regularly distributed data and reconstruct the missing traces.
Recently, the mainstream methods have implemented iterative
algorithms to solve data interpolation problems, which require
substantial computational resources and restrict their application
in high dimensions. In this study, we proposed the
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and
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streaming prediction filters (SPFs) to reconstruct
missing seismic traces without iterations. According to the
streaming computation framework, we directly derived an analytic
solution to the overdetermined least-squares problem with local
smoothness constraints for estimating SPFs in the frequency
domain. We introduced different processing paths and filter forms to
reduce the interference of missing traces, which can improve the
accuracy of filter coefficients. Meanwhile, we utilized a two-step
interpolation strategy to guarantee the effective interpolation of
the irregularly missing traces. Numerical examples show that the
proposed methods effectively recover the missing traces in seismic
data when compared with the traditional Fourier Projection Onto
Convex Sets (POCS) method. In particular, the frequency domain SPFs
are suitable for high-dimensional seismic data interpolation with
the advantages of low computational cost and reasonable
nonstationary signal reconstruction.