ABSTRACT
During geophysical exploration, inpainting defective logging images caused by mismatches between logging tools and borehole sizes can affect fracture and hole identification, petrographic analysis, and stratigraphic studies. However, existing methods do not describe sufficient stratigraphic continuity. In addition, they ignore the completeness of characterization in terms of fractures, gravel structures, and fine-grained textures in the logging images. To address these issues, we develop a deep-learning method for inpainting stratigraphic features. First, to enhance the continuity of image inpainting, we build a generative adversarial network and train it on numerous natural images to extract relevant features that guide the recovery of continuity characteristics. Second, to ensure that complete structural and textural features are found in geologic formations, we introduce a feature-extraction-fusion module with a cooccurrence mechanism consisting of channel attention (CA) and self-attention (SA). CA improves texture effects by adaptively adjusting control parameters based on highly correlated prior features from electrical logging images. SA captures long-range contextual associations across preinpainted gaps to improve completeness in fractures and gravel structure representation. Our method has been tested on various borehole images demonstrating its reliability and robustness.