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A deep convolutional encoder-decoder neural network in assisting seismic horizon tracking

About

Seismic horizons are geologically significant surfaces that can be used for building geology structure and stratigraphy models. However, horizon tracking in 3D seismic data is a time-consuming and challenging problem. Relief human from the tedious seismic interpretation is one of the hot research topics. We proposed a novel automatically seismic horizon tracking method by using a deep convolutional neural network. We employ a state-of-art end-to-end semantic segmentation method to track the seismic horizons automatically. Experiment result shows that our proposed neural network can automatically track multiple horizons simultaneously. We validate the effectiveness and robustness of our proposed method by comparing automatically tracked horizons with manually picked horizons.

Hao Wu, Bo Zhang• 2018

Related benchmarks

TaskDatasetResultRank
Surface reconstruction geometric error analysisF3(ξ)
MAE4.2
18
Seismic Horizon TrackingMexilhão (test)
MAE2.85
18
SegmentationF3 (val)
Mean Accuracy99.42
18
Semantic segmentationMexilhão (val)
Mean Accuracy99.46
18
SegmentationF3 (train)
Mean Accuracy99.79
18
Semantic segmentationMexilhão (train)
Mean Accuracy0.9969
18
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