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Deep learning for lithological classification of carbonate rock micro-CT images

机译:碳酸盐岩微型CT图像岩性分类深度学习

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In addition to the ongoing development, pre-salt carbonate reservoir characterization remains a challenge, primarily due to inherent geological particularities. These challenges stimulate the use of well-established technologies, such as artificial intelligence algorithms, for image classification tasks. Therefore, this work intends to present an application of deep learning techniques to identify lithological patterns in Brazilian pre-salt carbonate rocks using microtomographic images. Four convolutional neural network models were proposed. The first model includes three convolutional layers, followed by a fully connected layer. This model is used as a base model for the following proposals. In the next two models, we replace the max pooling layer with a spatial pyramid pooling and a global average pooling layer. The last model uses a combination of spatial pyramid pooling followed by global average pooling in place of the final pooling layer. All models are compared using original images, when possible, as well as resized images. The dataset consists of 6,000 images from three different classes. The model performances were evaluated by each image individually, as well as by the most frequently predicted class for each sample. According to accuracy, Model 2 trained on resized images achieved the best results, reaching an average of 75.54% for the first evaluation approach and an average of 81.33% for the second. We developed a workflow to automate and accelerate the lithology classification of Brazilian pre-salt carbonate samples by categorizing microtomographic images using deep learning algorithms in a non-destructive way.
机译:除了正在进行的发展之外,盐预碳酸盐储层表征仍然是一个挑战,主要是由于内在的地质特殊性。这些挑战刺激了使用既定技术,如人工智能算法,用于图像分类任务。因此,这项工作旨在展示使用微观图象识别巴西盐碳酸盐岩石中的岩性图案的应用。提出了四种卷积神经网络模型。第一模型包括三个卷积层,然后是完全连接的层。该模型用作以下建议的基础模型。在接下来的两个模型中,我们用空间金字塔池和全局平均池层更换最大池层。最后一个模型使用空间金字塔池的组合,然后是全局平均池代替最终池层。可以使用原始图像,以及调整大小的图像进行比较所有模型。 DataSet由来自三个不同类的6,000个图像组成。每个图像单独评估模型性能,以及每个样本的最常见的类别。根据准确性,模型2培训了调整大小的图像验证的最佳结果,平均达到了第一个评估方法的平均值75.54%,而且第二个评价方法平均为81.33%。我们开发了一种自动化和加速巴西盐碳酸酯样品的岩性分类的工作流程,通过以非破坏性的方式进行分类的微观图算法来分类微微斑点图像。

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