First arrival picking using U-net with Lovasz loss and nearest point picking method
Pengyu Yuan, Wenyi Hu, Xuqing Wu, Jiefu Chen, Hien Van Nguyen

TL;DR
This paper introduces a seismic first arrival picking method combining U-net segmentation with Lovasz loss and a nearest point picking algorithm, achieving high accuracy on synthetic and field data.
Contribution
It presents a novel workflow using Lovasz loss for improved segmentation and a nearest point method for enhanced picking accuracy in seismic data analysis.
Findings
Achieved a picking deviation as low as 4.8ms per receiver.
Performed well on synthetic and field data with noise.
Demonstrated the effectiveness of Lovasz loss over cross-entropy loss.
Abstract
We proposed a robust segmentation and picking workflow to solve the first arrival picking problem for seismic signal processing. Unlike traditional classification algorithm, image segmentation method can utilize the location information by outputting a prediction map which has the same size of the input image. A parameter-free nearest point picking algorithm is proposed to further improve the accuracy of the first arrival picking. The algorithm is test on synthetic clean data, synthetic noisy data, synthetic picking-disconnected data and field data. It performs well on all of them and the picking deviation reaches as low as 4.8ms per receiver. The first arrival picking problem is formulated as the contour detection problem. Similar to \cite{wu2019semi}, we use U-net to perform the segmentation as it is proven to be state-of-the-art in many image segmentation tasks. Particularly, a…
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Taxonomy
Methods*Communicated@Fast*How Do I Communicate to Expedia? · Concatenated Skip Connection · Max Pooling · Convolution · U-Net
