基于深度学习的硅藻形态自动识别

Dana Lambert, R. Green
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引用次数: 3

摘要

提出了一种利用9个形态分类自动识别硅藻藻的方法。使用来自NIWA和ADIAC的7092张带有相关分类群数据的图像创建训练集和测试集。在训练集上使用不同的增强和图像处理方法,看看这是否会提高准确性。对多个cnn进行了50次epoch的训练,并在验证集的基础上保存了准确率最高的模型。Resnet-50的准确率最高,达到了94%,尽管这是一个略有不同的分类问题,但它的准确率不如一个类似的研究达到的99%。
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Automatic Identification of Diatom Morphology using Deep Learning
This paper proposes a method to automatically identify diatom frustules using nine morphological categories. A total of 7092 images from NIWA and ADIAC with related taxa data were used to create training and test sets. Different augmentations and image processing methods were used on the training set to see if this would increase accuracy. Several CNNs were trained over a total of 50 epochs and the highest accuracy model was saved based on the validation set. Resnet-50 produced the highest accuracy of 94%, which is not as accurate as a similar study that achieved 99%, although this was for a slightly different classification problem.
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