Deep Learning for Microalgae Classification

Iago Correa, Paulo L. J. Drews-Jr, S. Botelho, M. S. Souza, V. Tavano
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引用次数: 32

Abstract

Microalgae are unicellular organisms that presents limited physical characteristics such as size, shape or even the present structures. Classifying them manually may require great effort from experts since thousands of microalgae can be found in a small sample of water. Furthermore, the manual classification is a non-trivial operation. We proposed a deep learning technique to solve the problem. We also created a classified dataset that allow us to adopt this technique. To the best of our knowledge, the present work is the first one to apply this kind of technique on the microalgae classification task. The obtained results show the capabilities of the method to properly classify the data by using as input the low resolution images acquired by a particle analyzer instead of pre-processed features. We also show the improvement provided by the use of data augmentation technique.
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微藻分类的深度学习
微藻是单细胞生物,具有有限的物理特征,如大小、形状甚至现在的结构。人工分类可能需要专家付出很大的努力,因为在一小块水样本中可以发现成千上万的微藻。此外,手工分类是一项重要的操作。我们提出了一种深度学习技术来解决这个问题。我们还创建了一个分类数据集,使我们能够采用这种技术。据我们所知,本工作是首次将该技术应用于微藻分类任务。实验结果表明,该方法可以将颗粒分析仪获取的低分辨率图像作为输入,而不是预处理后的特征,从而对数据进行正确的分类。我们还展示了使用数据增强技术所带来的改进。
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