Automated detection of microfossil fish teeth from slide images using combined deep learning models

IF 2.6 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Applied Computing and Geosciences Pub Date : 2022-12-01 DOI:10.1016/j.acags.2022.100092
Kazuhide Mimura , Shugo Minabe , Kentaro Nakamura , Kazutaka Yasukawa , Junichiro Ohta , Yasuhiro Kato
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引用次数: 2

Abstract

Microfossil fish teeth, known as ichthyoliths, provide a key constraint on the depositional age and environment of deep-sea sediments, especially pelagic clays where siliceous and calcareous microfossils are rarely observed. However, traditional methods for the observation of ichthyoliths require considerable time and manual labor, which can hinder their wider application. In this study, we constructed a system to automatically detect ichthyoliths in microscopic images by combining two open source deep learning models. First, the regions for ichthyoliths within the microscopic images are predicted by the instance segmentation model Mask R–CNN. All the detected regions are then re-classified using the image classification model EfficientNet-V2 to determine the classes more accurately. Compared with only using the Mask R–CNN model, the combined system offers significantly higher performance (89.0% precision, 78.6% recall, and an F1 score of 83.5%), demonstrating the utility of the system. Our system can also predict the lengths of the teeth that have been detected, with more than 90% of the predicted lengths being within ±20% of measured length. This system provides a novel, automated, and reliable approach for the detection and length measurement of ichthyoliths from microscope images that can be applied in a range of paleoceanographic and paleoecological contexts.

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结合深度学习模型从幻灯片图像中自动检测微化石鱼牙齿
微化石鱼牙,被称为鱼石,为研究深海沉积物的沉积时代和环境提供了关键的约束条件,特别是在很少观察到硅质和钙质微化石的远洋粘土中。然而,传统的观察鱼鳞石的方法需要大量的时间和体力劳动,这阻碍了它们的广泛应用。在这项研究中,我们结合两个开源的深度学习模型构建了一个系统来自动检测微观图像中的鱼鳞石。首先,通过实例分割模型Mask R-CNN预测显微图像中鱼石体的区域。然后使用图像分类模型EfficientNet-V2对所有检测到的区域进行重新分类,以更准确地确定类别。与仅使用Mask R-CNN模型相比,组合系统的性能显著提高(准确率为89.0%,召回率为78.6%,F1得分为83.5%),证明了系统的实用性。我们的系统还可以预测已经检测到的牙齿的长度,超过90%的预测长度在测量长度的±20%以内。该系统提供了一种新颖、自动化和可靠的方法,用于从显微镜图像中检测和测量鱼石的长度,可应用于一系列古海洋学和古生态学背景。
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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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