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Improving classification of pollen grain images of the POLEN23E dataset through three different applications of deep learning convolutional neural networks

机译:通过深度学习卷积神经网络的三种不同应用来改善POLEN23E数据集的花粉粒图像的分类

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摘要

In palynology, the visual classification of pollen grains from different species is a hard task which is usually tackled by human operators using microscopes. Its complete automatization would save a high quantity of resources and provide valuable improvements especially for allergy-related information systems, but also for other application fields as paleoclimate reconstruction, quality control of honey based products, collection of evidences in criminal investigations or fabric dating and tracking. This paper presents three state-of-the-art deep learning classification methods applied to the recently published POLEN23E image dataset. The three methods make use of convolutional neural networks: the first one is strictly based on the idea of transfer learning, the second one is based on feature extraction and the third one represents a hybrid approach, combining transfer learning and feature extraction. The results from the three methods are indeed very good, reaching over 97% correct classification rates in images not previously seen by the models, where other authors reported around 70.
机译:在孢粉学中,视觉分类来自不同物种的花粉粒是一项艰巨的任务,通常由操作人员使用显微镜来解决。它的完全自动化将节省大量资源并提供有价值的改进,特别是对于与过敏相关的信息系统,还可以用于其他应用领域,如古气候重建,蜂蜜产品的质量控制,刑事调查或织物定型和追踪中的证据收集。本文介绍了应用于最新发布的POLEN23E图像数据集的三种最先进的深度学习分类方法。三种方法都使用了卷积神经网络:第一种严格基于转移学习的思想,第二种基于特征提取,第三种代表结合了转移学习和特征提取的混合方法。这三种方法的结果确实非常好,在模型以前没有看到的图像中,正确分类率达到了97%以上,其他作者报告的正确率约为70。

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