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Classification of morphologically similar algae and cyanobacteria using Mueller matrix imaging and convolutional neural networks

机译:使用Mueller矩阵成像和卷积神经网络对形态相似的藻类和青霉菌的分类

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摘要

We present the Mueller matrix imaging system to classify morphologically similar algae based on convolutional neural networks (CNNs). The algae and cyanobacteria data set contains 10,463 Mueller matrices from eight species of algae and one species of cyanobacteria, belonging to four phyla, the shapes of which are mostly randomly oriented spheres, ovals, wheels, or rods. The CNN serves as an automatic machine with learning ability to help in extracting features from the Mueller matrix, and trains a classifier to achieve a 97% classification accuracy. We compare the performance in two ways. One way is to compare the performance of five CNNs that differ in the number of convolution layers as well as the classical principle component analysis (PCA) plus the support vector machine (SVM) method; the other way is to quantify the differences of scores between full Mueller matrix and the first matrix element m11, which does not contain polarization information under the same conditions. As the results show, deeper CNNs perform better, the best of which outperforms the conventional PCA plus SVM method by 19.66% in accuracy, and using the full Mueller matrix earns 6.56% increase of accuracy than using m11. It demonstrates that the coupling of Mueller matrix imaging and CNN may be a promising and efficient solution for the automatic classification of morphologically similar algae. (c) 2017 Optical Society of America
机译:我们介绍了穆勒矩阵成像系统,基于卷积神经网络(CNNS)对形态上类似的藻类进行分类。藻类和青霉菌数据集含有来自八种藻类的10,463个橡胶矩阵和一种含有四种植物的三种植物,其形状主要是随机定向的球体,椭圆形,轮子或杆。 CNN用作具有学习能力的自动机器,可以帮助从穆勒矩阵中提取特征,并列举分类器以达到97%的分类精度。我们以两种方式进行比较性能。一种方法是比较五个CNN的性能,这在卷积层的数量和经典原理分量分析(PCA)加上支持向量机(SVM)方法;另一种方式是量化全穆勒矩阵与第一矩阵元素M11之间的分数的差异,其在相同条件下不包含偏振信息。随着结果表明,更深的CNNS表现更好,其中最佳优于传统的PCA加SVM方法19.66%,准确度,并且使用全穆勒矩阵的准确性增加了6.56%,而不是使用M11。结果表明,穆勒基质成像和CNN的耦合可能是用于自动分类形态学上类似的藻类的有希望的有效和有效的解决方案。 (c)2017年光学学会

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  • 来源
    《Applied optics》 |2017年第23期|共11页
  • 作者单位

    Tsinghua Univ Grad Sch Shenzhen Shenzhen Key Lab Minimal Invas Med Technol Shenzhen 518055 Peoples R China;

    Tsinghua Univ Grad Sch Shenzhen Shenzhen Key Lab Minimal Invas Med Technol Shenzhen 518055 Peoples R China;

    Tsinghua Univ Grad Sch Shenzhen Shenzhen Key Lab Minimal Invas Med Technol Shenzhen 518055 Peoples R China;

    City Univ Hong Kong State Key Lab Marine Pollut Kowloon Hong Kong Peoples R China;

    City Univ Hong Kong State Key Lab Marine Pollut Kowloon Hong Kong Peoples R China;

    Tsinghua Univ Grad Sch Shenzhen Shenzhen Key Lab Minimal Invas Med Technol Shenzhen 518055 Peoples R China;

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  • 正文语种 eng
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