Advancing geological image segmentation: Deep learning approaches for rock type identification and classification

IF 2.6 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Applied Computing and Geosciences Pub Date : 2024-09-01 DOI:10.1016/j.acags.2024.100192
Amit Kumar Gupta , Priya Mathur , Farhan Sheth , Carlos M. Travieso-Gonzalez , Sandeep Chaurasia
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引用次数: 0

Abstract

This study aims to tackle the obstacles linked with geological image segmentation by employing sophisticated deep learning techniques. Geological formations, characterized by diverse forms, sizes, textures, and colors, present a complex landscape for traditional image processing techniques. Drawing inspiration from recent advancements in image segmentation, particularly in medical imaging and object recognition, this research proposed a comprehensive methodology tailored to the specific requirements of geological image datasets. To establish the dataset, a minimum of 50 images per rock type was deemed essential, with the majority captured at the University of Las Palmas de Gran Canaria and during a field expedition to La Isla de La Palma, Spain. This dual-source approach ensures diversity in geological formations, enriching the dataset with a comprehensive range of visual characteristics. The study involves the identification of 19 distinct rock types, each documented with 50 samples, resulting in a comprehensive database containing 950 images. The methodology involves two crucial phases: initial preprocessing of the dataset, focusing on formatting and optimization, and subsequent application of deep learning models—ResNets, Inception V3, DenseNets, MobileNets V3, and EfficientNet V2 large. Preparing the dataset is crucial for improving both the quality and relevance, thereby to ensure the optimal performance of deep learning models, the dataset was preprocessed. Following this, transfer learning or more specifically fine-tuning is applied in the subsequent phase with ResNets, Inception V3, DenseNets, MobileNets V3, and EfficientNet V2 large, leveraging pre-trained models to enhance classification task performance. After fine-tuning eight deep learning models with optimal hyperparameters, including ResNet101, ResNet152, Inception-v3, DenseNet169, DenseNet201, MobileNet-v3-small, MobileNet-v3-large, and EfficientNet-v2-large, comprehensive evaluation revealed exceptional performance metrics. DenseNet201 and InceptionV3 attained the highest accuracy of 98.49% when tested on the original dataset, leading in precision, sensitivity, specificity, and F-score. Incorporating preprocessing steps further improved results, with all models exceeding 97.5% accuracy on the preprocessed dataset. In K-Fold cross-validation (k = 5), MobileNet V3 large excelled with the highest accuracy of 99.15%, followed by ResNet101 at 99.08%. Despite varying training times, models on the preprocessed dataset showed faster convergence without overfitting. Minimal misclassifications were observed, mainly among specific classes. Overall, the study's methodologies yielded remarkable results, surpassing 99% accuracy on the preprocessed dataset and in K-Fold cross-validation, affirming the efficacy in advancing rock type understanding.

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推进地质图像分割:岩石类型识别和分类的深度学习方法
本研究旨在通过采用复杂的深度学习技术,解决与地质图像分割相关的障碍。地质构造的形态、大小、纹理和颜色多种多样,对于传统的图像处理技术来说是一个复杂的难题。本研究从近年来图像分割领域(尤其是医学成像和物体识别领域)的最新进展中汲取灵感,提出了一种针对地质图像数据集特定要求的综合方法。为了建立数据集,每种岩石类型至少需要 50 张图像,其中大部分图像是在拉斯帕尔马斯德大加那利岛大学和西班牙拉帕尔马岛实地考察期间拍摄的。这种双源方法确保了地质构造的多样性,丰富了数据集的视觉特征。这项研究包括识别 19 种不同的岩石类型,每种类型有 50 个样本,最终形成一个包含 950 幅图像的综合数据库。该方法包括两个关键阶段:对数据集进行初步预处理,重点是格式化和优化;随后应用深度学习模型--ResNets、Inception V3、DenseNets、MobileNets V3 和 EfficientNet V2 large。准备数据集对于提高质量和相关性至关重要,因此,为了确保深度学习模型的最佳性能,我们对数据集进行了预处理。然后,在随后的阶段利用 ResNets、Inception V3、DenseNets、MobileNets V3 和 EfficientNet V2 large 进行迁移学习或更具体的微调,利用预先训练的模型来提高分类任务的性能。在使用最佳超参数对 ResNet101、ResNet152、Inception-v3、DenseNet169、DenseNet201、MobileNet-v3-small、MobileNet-v3-large 和 EfficientNet-v2-large 等八个深度学习模型进行微调后,综合评估显示了卓越的性能指标。在原始数据集上进行测试时,DenseNet201 和 InceptionV3 的准确率最高,达到 98.49%,在精确度、灵敏度、特异性和 F 分数方面均处于领先地位。加入预处理步骤进一步提高了结果,所有模型在预处理数据集上的准确率都超过了 97.5%。在 K-Fold 交叉验证(k = 5)中,MobileNet V3 large 的准确率最高,达到 99.15%,其次是 ResNet101,为 99.08%。尽管训练时间不同,但预处理数据集上的模型收敛速度更快,没有出现过度拟合。误分类现象极少,主要是在特定类别中。总体而言,该研究的方法取得了显著的成果,在预处理数据集和 K-Fold 交叉验证中的准确率超过了 99%,肯定了其在促进岩石类型理解方面的功效。
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来源期刊
Applied Computing and Geosciences
Applied Computing and Geosciences Computer Science-General Computer Science
CiteScore
5.50
自引率
0.00%
发文量
23
审稿时长
5 weeks
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