雨红球菌细胞图像分类算法研究

Sun Chen, Cui Shigang, Zhang Yongli, He Lin, Li Xinqi, Zhang Jingyu
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引用次数: 0

摘要

雨红球菌的虾青素含量最高,是自然界中虾青素生产的最佳生物来源。其培养阶段主要分为细胞增殖阶段和虾青素积累阶段。由于雨红球菌在不同生长阶段的细胞颜色和细胞半径不同,因此寻求一种高效准确的图像分类算法来识别雨红球菌的生长阶段。针对这一问题,本文选择机器学习图像分类算法中复杂度和准确率更为平衡的三种算法(C4.5决策树、SVM、KNN)来识别雨红球菌细胞,并探索雨红球菌细胞的应用。藻类细胞图像分类算法。通过提取细胞图像的特征并计算图像中的像素数,然后使用相应的算法训练模型来完成图像分类。实验结果表明,决策树算法明显优于其他两种算法,分类准确率约为97%。可以看出,采用决策树算法训练的分类模型取得了良好的分类效果,为解决雨红球菌细胞图像分类问题提供了一种有效的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Research on Image Classification Algorithm of Haematococcus Pluvialis Cells
Haematococcus pluvialis has the highest content of astaxanthin and is recognized as the best biological source for astaxanthin production in nature. Its culture stage is mainly divided into cell proliferation stage and astaxanthin accumulation stage. Because the color and cell radius of Haematococcus pluvialis cells are different at different stages, an efficient and accurate image classification algorithm is sought to identify the growth stage of Haematococcus pluvialis. In response to this problem, this paper selects three algorithms (C4.5 decision tree, SVM, KNN) with more balanced complexity and accuracy in the machine learning image classification algorithm to identify Haematococcus pluvialis cells, and explores the application of Pluvialis pluvialis cells. Algorithms for image classification of algal cells. The image classification is completed by extracting the features of the cell image and calculating the number of pixels in the image, and then using the corresponding algorithm to train the model. The experimental results show that the decision tree algorithm is significantly better than the other two algorithms, and the classification accuracy is about 97%. It can be seen that the classification model trained by the decision tree algorithm achieves a good classification effect, and provides an effective method for solving the problem of Haematococcus pluvialis cell image classification.
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