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Seismic fault detection uses a simplified Semantic Segmentation Network(VGG 16) with HDC and ASPP.

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Seismic-Fault-Interpretation-Using-Deep-Learning-based-Semantic-Segmentation-Method

Seismic fault detection uses a simplified Semantic Segmentation Network(VGG 16) with HDC and ASPP. This a workflow that uses a convolutional neural network–based method of semantic segmentation to interpret faults by using a small training set. The steps to implement this process are as follows:

  1. Use the programs in the folder "train_sample_selection" to generate samples.
  2. Use F3_hdc+aspp_output and F3_largefov to achieve model training and prediction.
  3. Use the programs in the folder "post_processing" to refine the prediction result.

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Seismic fault detection uses a simplified Semantic Segmentation Network(VGG 16) with HDC and ASPP.

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