A deep-learning approach for dynamic region merging applied to feature extraction from borehole microresistivity images
Gang Long,
Jinsong Shen,
Yaxi Li
et al.
Abstract:The primary purpose of processing borehole resistivity images is to identify and extract high (or low) resistivity anomalous areas, which are associated with resistive fractures and dissolved pores. To improve the accuracy and applicability of these models, a new intelligent method combining dynamic region merging (DRM) with a deep learning network (U-Net) is proposed. The superpixel method, also referred to as linear spectral clustering (LSC), was applied to segment fractures and dissolved pores that are repr… Show more
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