Automated analysis of foraminifera fossil records by image classification using a convolutional neural network

IF 4.1 3区 地球科学 Q1 PALEONTOLOGY
R. Marchant, M. Tetard, Adnya Pratiwi, M. Adebayo, T. de Garidel-Thoron
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引用次数: 29

Abstract

Abstract. Manual identification of foraminiferal morphospecies or morphotypes under stereo microscopes is time consuming for micropalaeontologists and not possible for nonspecialists. Therefore, a long-term goal has been to automate this process to improve its efficiency and repeatability. Recent advances in computation hardware have seen deep convolutional neural networks emerge as the state-of-the-art technique for image-based automated classification. Here, we describe a method for classifying large foraminifera image sets using convolutional neural networks. Construction of the classifier is demonstrated on the publicly available Endless Forams image set with a best accuracy of approximately 90 %. A complete automatic analysis is performed for benthic species dated to the last deglacial period for a sediment core from the north-eastern Pacific and for planktonic species dated from the present until 180 000 years ago in a core from the western Pacific warm pool. The relative abundances from automatic counting based on more than 500 000 images compare favourably with manual counting, showing the same signal dynamics. Our workflow opens the way to automated palaeoceanographic reconstruction based on computer image analysis and is freely available for use.
利用卷积神经网络通过图像分类自动分析有孔虫化石记录
摘要在立体显微镜下手工鉴定有孔虫形态种或形态型对微体古生物学家来说是费时的,对非专业人员来说是不可能的。因此,长期目标是使该过程自动化,以提高其效率和可重复性。计算硬件的最新进展已经看到深度卷积神经网络作为基于图像的自动分类的最先进技术出现。在这里,我们描述了一种使用卷积神经网络对大型有孔虫图像集进行分类的方法。在公开可用的Endless Forams图像集上演示了分类器的构建,其最佳准确率约为90%。对东北太平洋沉积物岩心的最后一次去冰期底栖生物物种和西太平洋暖池岩心的现在至18万年前浮游生物物种进行了完整的自动分析。基于超过50万张图像的自动计数的相对丰度与人工计数相比有利,显示出相同的信号动态。我们的工作流程为基于计算机图像分析的自动古海洋学重建开辟了道路,并且可以免费使用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Journal of Micropalaeontology
Journal of Micropalaeontology 生物-古生物学
CiteScore
4.30
自引率
5.00%
发文量
7
审稿时长
>12 weeks
期刊介绍: The Journal of Micropalaeontology (JM) is an established international journal covering all aspects of microfossils and their application to both applied studies and basic research. In particular we welcome submissions relating to microfossils and their application to palaeoceanography, palaeoclimatology, palaeobiology, evolution, taxonomy, environmental change and molecular phylogeny.
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