The 3-billion fossil question: How to automate classification of microfossils

Iver Martinsen , David Wade , Benjamin Ricaud , Fred Godtliebsen
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引用次数: 0

Abstract

Microfossil classification is an important discipline in subsurface exploration, for both oil & gas and Carbon Capture and Storage (CCS). The abundance and distribution of species found in sedimentary rocks provide valuable information about the age and depositional environment. However, the analysis is difficult and time-consuming, as it is based on manual work by human experts. Attempts to automate this process face two key challenges: (1) the input data are very large - our dataset is projected to grow to 3 billion microfossils, and (2) there are not enough labeled data to use the standard procedure of training a deep learning classifier. We propose an efficient pipeline for processing and grouping fossils by genus, or even species, from microscope slides using self-supervised learning. First we show how to efficiently extract crops from whole slide images by adapting previously trained object detection algorithms. Second, we provide a comparison of a range of self-supervised learning methods to classify and identify microfossils from very few labels. We obtain excellent results with both convolutional neural networks and vision transformers fine-tuned by self-supervision. Our approach is fast and computationally light, providing a handy tool for geologists working with microfossils.

30 亿化石问题:如何自动分类微化石
微化石分类是油气和碳捕获与封存(CCS)地下勘探的一门重要学科。沉积岩中物种的数量和分布提供了有关年龄和沉积环境的宝贵信息。然而,这项分析工作十分困难且耗时,因为它是基于人类专家的手工操作。尝试将这一过程自动化面临两个关键挑战:(1)输入数据非常庞大--我们的数据集预计将增长到 30 亿个微化石;(2)没有足够的标记数据来使用训练深度学习分类器的标准程序。我们提出了一种高效的方法,利用自监督学习从显微镜切片中按属、甚至种处理化石并对其进行分组。首先,我们展示了如何通过调整以前训练过的物体检测算法,从整张玻片图像中高效提取作物。其次,我们比较了一系列自我监督学习方法,以便从极少的标签中对微化石进行分类和识别。我们利用卷积神经网络和经自我监督微调的视觉转换器取得了出色的结果。我们的方法速度快、计算量小,为从事微化石研究的地质学家提供了一个便捷的工具。
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CiteScore
4.20
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