Beyond transfer learning: Leveraging ancillary images in automated classification of plankton

IF 2.1 3区 地球科学 Q2 LIMNOLOGY Limnology and Oceanography: Methods Pub Date : 2024-09-25 DOI:10.1002/lom3.10648
Jeffrey S. Ellen, Mark D. Ohman
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Abstract

We assess whether a supervised machine learning algorithm, specifically a convolutional neural network (CNN), achieves higher accuracy on planktonic image classification when including non-plankton and ancillary plankton during the training procedure. We focus on the case of optimizing the CNN for a single planktonic image source, while considering ancillary images to be plankton images from other instruments. We conducted two sets of experiments with three different types of plankton images (from a Zooglider, Underwater Vision Profiler 5, and Zooscan), and our results held across all three image types. First, we considered whether single-stage transfer learning using non-plankton images was beneficial. For this assessment, we used ImageNet images and the 2015 ImageNet contest-winning model, ResNet-152. We found increased accuracy using a ResNet-152 model pretrained on ImageNet, provided the entire network was retrained rather than retraining only the fully connected layers. Next, we combined all three plankton image types into a single dataset with 3.3 million images (despite their differences in contrast, resolution, and pixel pitch) and conducted a multistage transfer learning assessment. We executed a transfer learning stage from ImageNet to the merged ancillary plankton dataset, then a second transfer learning stage from that merged plankton model to a single instrument dataset. We found that multistage transfer learning resulted in additional accuracy gains. These results should have generality for other image classification tasks.

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超越迁移学习:在浮游生物自动分类中利用辅助图像
我们评估了在训练过程中包括非浮游生物和辅助浮游生物时,监督机器学习算法,特别是卷积神经网络(CNN)是否在浮游生物图像分类上达到更高的准确性。我们专注于为单一浮游生物图像源优化CNN的情况,同时考虑辅助图像是来自其他仪器的浮游生物图像。我们用三种不同类型的浮游生物图像(来自Zooglider, Underwater Vision Profiler 5和Zooscan)进行了两组实验,我们的结果适用于所有三种图像类型。首先,我们考虑了使用非浮游生物图像的单阶段迁移学习是否有益。为了进行评估,我们使用了ImageNet图像和2015年ImageNet竞赛获奖模型ResNet-152。我们发现使用在ImageNet上预训练的ResNet-152模型提高了准确性,前提是对整个网络进行再训练,而不是只对完全连接的层进行再训练。接下来,我们将所有三种浮游生物图像类型合并到一个包含330万张图像的单一数据集中(尽管它们在对比度、分辨率和像素间距上存在差异),并进行了多阶段迁移学习评估。我们执行了从ImageNet到合并的附属浮游生物数据集的迁移学习阶段,然后从合并的浮游生物模型到单个仪器数据集的第二次迁移学习阶段。我们发现,多阶段迁移学习导致了额外的准确性提高。这些结果对于其他图像分类任务应该具有通用性。
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来源期刊
CiteScore
4.80
自引率
3.70%
发文量
56
审稿时长
3 months
期刊介绍: Limnology and Oceanography: Methods (ISSN 1541-5856) is a companion to ASLO''s top-rated journal Limnology and Oceanography, and articles are held to the same high standards. In order to provide the most rapid publication consistent with high standards, Limnology and Oceanography: Methods appears in electronic format only, and the entire submission and review system is online. Articles are posted as soon as they are accepted and formatted for publication. Limnology and Oceanography: Methods will consider manuscripts whose primary focus is methodological, and that deal with problems in the aquatic sciences. Manuscripts may present new measurement equipment, techniques for analyzing observations or samples, methods for understanding and interpreting information, analyses of metadata to examine the effectiveness of approaches, invited and contributed reviews and syntheses, and techniques for communicating and teaching in the aquatic sciences.
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