The application of “transfer learning” in optical microscopy: the petrographic classification of metallic minerals

IF 2.7 3区 地球科学 Q2 GEOCHEMISTRY & GEOPHYSICS American Mineralogist Pub Date : 2024-03-22 DOI:10.2138/am-2023-9092
Yi-Wei Cai, Kun-Feng Qiu, Maurizio Petrelli, Zhao-Liang Hou, M. Santosh, Hao-Cheng Yu, Ryan T. Armstrong, Jun Deng
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Abstract

Analysis of optical microscopic image data is crucial for the identification and characterization of mineral phases, and thus directly relevant to the subsequent methodology selections of further detailed petrological exploration. Here we present a novel application of Swin Transformer, a deep learning algorithm to classify metal mineral phases such as arsenopyrite, chalcopyrite, gold, pyrite, and stibnite, in images captured by optical microscopy. To speed up the training process and improve the generalization capabilities of the investigated model, we adopt the “transfer learning” paradigm by pretraining the algorithm using a large, general-purpose, image dataset named ImageNet-1k. Further, we compare the performances of the Swin Transformer with those of two well-established Convolutional Neural Networks (CNNs) named MobileNetv2 and ResNet50, respectively. Our results highlight a maximum accuracy of 0.92 for the Swin Transformer, outperforming the CNNs. To provide an interpretation of the trained models, we apply the so-called Class Activation Map (CAM), which points to a strong global feature extraction ability of the Swin Transformer metal mineral classifier that focuses on distinctive (e.g., colors) and microstructural (e.g., edge shapes) features. The results demonstrate that the deep learning approach can accurately extract all available attributes, which reveals the potential to assist in data exploration and provides an opportunity to carry out spatial quantization at a large scale (cm-mm). Simultaneously, boosting the learning processes with pre-trained weights can accurately capture relevant attributes in mineral classification, revealing the potential for application in mineralogy and petrology, as well as enabling its use in resource explorations.
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光学显微镜中 "迁移学习 "的应用:金属矿物的岩石学分类
光学显微图像数据分析对于矿物相的识别和特征描述至关重要,因此直接关系到后续详细岩石学勘探的方法选择。在此,我们提出了一种新颖的 Swin Transformer 应用,这是一种深度学习算法,用于在光学显微镜捕获的图像中对砷黄铁矿、黄铜矿、金矿、黄铁矿和锡黄铁矿等金属矿相进行分类。为了加快训练过程并提高所研究模型的泛化能力,我们采用了 "迁移学习 "范式,使用名为 ImageNet-1k 的大型通用图像数据集对算法进行预训练。此外,我们还比较了 Swin Transformer 与两个成熟的卷积神经网络(CNN)(分别名为 MobileNetv2 和 ResNet50)的性能。我们的结果表明,Swin Transformer 的最高准确率为 0.92,优于 CNN。为了对训练好的模型进行解释,我们应用了所谓的类激活图(CAM),该图表明 Swin Transformer 金属矿物分类器具有很强的全局特征提取能力,它侧重于独特特征(如颜色)和微观结构特征(如边缘形状)。结果表明,深度学习方法可以准确提取所有可用属性,这揭示了其协助数据探索的潜力,并为在大尺度(厘米-毫米)上进行空间量化提供了机会。同时,利用预先训练的权重增强学习过程可以准确捕捉矿物分类中的相关属性,揭示了在矿物学和岩石学中的应用潜力,并使其能够用于资源勘探。
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来源期刊
American Mineralogist
American Mineralogist 地学-地球化学与地球物理
CiteScore
5.20
自引率
9.70%
发文量
276
审稿时长
1 months
期刊介绍: American Mineralogist: Journal of Earth and Planetary Materials (Am Min), is the flagship journal of the Mineralogical Society of America (MSA), continuously published since 1916. Am Min is home to some of the most important advances in the Earth Sciences. Our mission is a continuance of this heritage: to provide readers with reports on original scientific research, both fundamental and applied, with far reaching implications and far ranging appeal. Topics of interest cover all aspects of planetary evolution, and biological and atmospheric processes mediated by solid-state phenomena. These include, but are not limited to, mineralogy and crystallography, high- and low-temperature geochemistry, petrology, geofluids, bio-geochemistry, bio-mineralogy, synthetic materials of relevance to the Earth and planetary sciences, and breakthroughs in analytical methods of any of the aforementioned.
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