SeismiQB -- a novel framework for deep learning with seismic data
- URL: http://arxiv.org/abs/2001.06416v1
- Date: Fri, 10 Jan 2020 10:45:56 GMT
- Title: SeismiQB -- a novel framework for deep learning with seismic data
- Authors: Alexander Koryagin, Roman Khudorozhkov, Sergey Tsimfer, Darima
Mylzenova
- Abstract summary: We've developed an open-sourced Python framework with emphasis on working with neural networks.
It provides convenient tools for fast loading seismic cubes in multiple data formats.
It also generates crops of desired shape and augmenting them with various transformations.
- Score: 62.997667081978825
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: In recent years, Deep Neural Networks were successfully adopted in numerous
domains to solve various image-related tasks, ranging from simple
classification to fine borders annotation. Naturally, many researches proposed
to use it to solve geological problems. Unfortunately, many of the seismic
processing tools were developed years before the era of machine learning,
including the most popular SEG-Y data format for storing seismic cubes. Its
slow loading speed heavily hampers experimentation speed, which is essential
for getting acceptable results. Worse yet, there is no widely-used format for
storing surfaces inside the volume (for example, seismic horizons). To address
these problems, we've developed an open-sourced Python framework with emphasis
on working with neural networks, that provides convenient tools for (i) fast
loading seismic cubes in multiple data formats and converting between them,
(ii) generating crops of desired shape and augmenting them with various
transformations, and (iii) pairing cube data with labeled horizons or other
types of geobodies.
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