Classification of pollen grain images with MobileNet

Júlio César da Silva Soares, K. Aires, Alan R. Santos, R. Veras, O. P. S. Neto, G. N. Neto, Flávio H. D. Araújo
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引用次数: 0

Abstract

The analysis of pollen grains is a prominent task in areas such as ecology, food engineering, and others that have different purposes, such as identifying the origin of honey, as well as helping in the development of new products or evaluating the quality of the products. This research presents a CNN architecture to classify pollen grains that can have performance equal to or superior to those found in the literature. Using POLEN23E database. Two experiments were performed with this database, one of which used data augmentation to improve accuracy. Promising results were obtained, as the experiments achieved 92% accuracy in the worst case and 100% accuracy in the best case. Two experiments were performed where one of them used data augmentation to improve accuracy. Promising results were obtained, as the experiments achieved 92% accuracy in the worst case and 100% accuracy in the best case.
基于MobileNet的花粉粒图像分类
花粉粒的分析在生态学、食品工程和其他具有不同用途的领域(如鉴定蜂蜜的来源,以及帮助开发新产品或评估产品质量)是一项突出的任务。本研究提出了一种CNN架构来对花粉颗粒进行分类,其性能可以等同于或优于文献中发现的。采用POLEN23E数据库。对该数据库进行了两次实验,其中一次使用数据增强来提高准确性。实验结果令人满意,在最坏情况下准确率达到92%,在最佳情况下准确率达到100%。进行了两个实验,其中一个使用数据增强来提高准确性。实验结果令人满意,在最坏情况下准确率达到92%,在最佳情况下准确率达到100%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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