Merging databases for CNN image recognition, increasing bias or improving results?

IF 1.5 4区 地球科学 Q2 PALEONTOLOGY Marine Micropaleontology Pub Date : 2023-10-11 DOI:10.1016/j.marmicro.2023.102296
Martin Tetard , Veronica Carlsson , Mathias Meunier , Taniel Danelian
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引用次数: 1

Abstract

Automated microscopy, image processing, and recognition using artificial intelligence is getting a growing interest from the scientific community, as more and more research centres are actively working on building datasets of images for training convolutional neural networks (CNNs) to identify microscopic objects. However, images acquired between institutes might show differences in light and contrast intensity leading to potential bias in identification when using datasets or CNNs from another institute.

One might then question if combining datasets acquired in different conditions is likely to improve the efficiency of the resulting CNN by increasing the number of images and integrating lighting variability into the learning process, or on the contrary introduce bias in the CNN training by adding a recurrent noise, common to all classes, through a substantial light and contrast variability.

In order to ease collaboration between laboratories, two datasets of middle Eocene radiolarian images, acquired separately at GNS Science (NZ) and the University of Lille (France), were generated to assess the accuracy of CNNs trained on both datasets individually, and also when combined into a third dataset. The performance of the three resulting CNNs was then evaluated on new images acquired at both institutions.

Finally, the new radiolarian dataset generated at GNS allowed to easily detect unknown taxa, which are otherwise abundant in the studied material. Seven new species are described: Ceratospyris metroid n. sp., Ceratospyris okazakii n. sp., Desmospyris biloba n. sp., Botryostrobus lagena n. sp., Buryella apiculata n. sp., Lophocyrtis cortesei n. sp., and Cromyosphaera fulgurans n. sp.

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合并数据库用于CNN图像识别,增加偏差还是改善结果?
使用人工智能的自动显微镜、图像处理和识别越来越受到科学界的关注,因为越来越多的研究中心正在积极构建图像数据集,用于训练卷积神经网络(CNNs)来识别微观物体。然而,当使用来自另一个研究所的数据集或细胞神经网络时,研究所之间获得的图像可能显示出光照和对比度的差异,从而导致识别中的潜在偏差。然后,人们可能会质疑,组合在不同条件下获得的数据集是否有可能通过增加图像数量并将光照可变性集成到学习过程中来提高所得CNN的效率,或者相反,通过显著的光照和对比度可变性,添加所有类别常见的重复噪声,从而在CNN训练中引入偏差。为了简化实验室之间的合作,生成了两个分别在GNS Science(新西兰)和里尔大学(法国)获得的始新世中期放射虫图像数据集,以评估在这两个数据集上单独训练的细胞神经网络的准确性,并将其组合到第三个数据集中。然后,在两个机构获得的新图像上评估三个产生的细胞神经网络的性能。最后,GNS生成的新放射虫数据集可以很容易地检测未知分类群,否则这些分类群在研究材料中会很丰富。描述了七个新种:Ceratospiris metroid n.sp.、Ceratospiis okazakii n.sp.,Desmospyris biloba n.sp.;Botryostrobus lagena n.sp。
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来源期刊
Marine Micropaleontology
Marine Micropaleontology 地学-古生物学
CiteScore
3.70
自引率
15.80%
发文量
62
审稿时长
26.7 weeks
期刊介绍: Marine Micropaleontology is an international journal publishing original, innovative and significant scientific papers in all fields related to marine microfossils, including ecology and paleoecology, biology and paleobiology, paleoceanography and paleoclimatology, environmental monitoring, taphonomy, evolution and molecular phylogeny. The journal strongly encourages the publication of articles in which marine microfossils and/or their chemical composition are used to solve fundamental geological, environmental and biological problems. However, it does not publish purely stratigraphic or taxonomic papers. In Marine Micropaleontology, a special section is dedicated to short papers on new methods and protocols using marine microfossils. We solicit special issues on hot topics in marine micropaleontology and review articles on timely subjects.
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