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Deblending by modified dictionary learning using Sparse Parameter Training

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摘要 Considerable attempts have been made on removing the crosstalk noise in a simultaneous source data using the popular K-means Singular Value Decomposition algorithm(KSVD).Several hybrids of this method have been designed and successfully deployed,but the complex nature of blending noise makes it difficult to manipulate easily.One of the challenges of the K-means Singular Value Decomposition approach is the challenge to obtain an exact KSVD for each data patch which is believed to result in a better output.In this work,we propose a learnable architecture capable of data training while retaining the K-means Singular Value Decomposition essence to deblend simultaneous source data.
出处 《Global Geology》 2021年第4期226-238,共13页 世界地质(英文版)
基金 Supported by State Key Research and Development Program of China(No.2018YFC0310104) National Natural Science Foundation of China(Nos.41974163,4213080)。
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