Litcius/Paper detail

A Fast Sparse Hyperbolic Radon Transform Based on Convolutional Neural Network and Its Demultiple Application

Yaru Xue, Hewei Shen, Ming Jiang, Luyu Feng, Mengjun Guo, Zhiqing Wang

2022IEEE Geoscience and Remote Sensing Letters21 citationsDOI

Abstract

The hyperbolic Radon transform (RT) is a widely used demultiple method in the seismic data processing. But this transformation faces two major defects. The limited aperture of acquisition leads to the scissor-like diffusion in the Radon domain, which introduces separation difficulties between primaries and multiples. In addition, the computation of large matrices inversion involved in hyperbolic RT reduces the processing efficiency. In this letter, a specific Convolutional Neural Network (CNN) is designed to conduct a Fast Sparse Hyperbolic Radon Transform (FSHRT). Two techniques are incorporated into CNN to find the sparse solution. One is the coding-decoding structure, which captures the sparse feature of Radon parameters. The other is the soft threshold activation function followed by the end of neural networks, which suppresses the small parameters and further improves the sparsity. Thus, the network realizes the direct mapping between the adjoint solution and the sparse solution. Furthermore, synthetic and field demultiple experiments are carried out to demonstrate the rapidity and effectiveness of the proposed method.

Topics & Concepts

Radon transformComputer scienceConvolutional neural networkNeural codingRadonComputationAlgorithmDecoding methodsSparse matrixImage processingPattern recognition (psychology)Artificial intelligenceImage (mathematics)PhysicsGaussianQuantum mechanicsSeismic Imaging and Inversion TechniquesAdvanced Image Processing TechniquesImage and Signal Denoising Methods
A Fast Sparse Hyperbolic Radon Transform Based on Convolutional Neural Network and Its Demultiple Application | Litcius