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Classifying Insects from SEM Images Based on Optimal Classifier Selection and D-S Evidence Theory

机译:基于最优分类器选择和D-S证据理论的SEM图像昆虫分类

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摘要

In this paper, an insect classification method using scanning electron microphotographs is presented. Images taken by a scanning electron microscope (SEM) have a unique problem for classification in that visual features differ from each other by magnifications. Therefore, direct use of conventional methods results in inaccurate classification results. In order to successfully classify these images, the proposed method generates an optimal training dataset for constructing a classifier for each magnification. Then our method classifies images using the classifiers constructed by the optimal training dataset. In addition, several images are generally taken by an SEM with different magnifications from the same insect. Therefore, more accurate classification can be expected by integrating the results from the same insect based on Dempster-Shafer evidence theory. In this way, accurate insect classification can be realized by our method. At the end of this paper, we show experimental results to confirm the effectiveness of the proposed method.
机译:本文提出了一种利用扫描电子显微照片对昆虫进行分类的方法。扫描电子显微镜(SEM)拍摄的图像存在一个独特的分类问题,即视觉特征因放大倍数而彼此不同。因此,直接使用常规方法会导致分类结果不准确。为了成功地对这些图像进行分类,所提出的方法生成了用于构建每个放大率的分类器的最佳训练数据集。然后我们的方法使用最佳训练数据集构造的分类器对图像进行分类。另外,通常用同一只昆虫用不同倍率的SEM拍摄几张图像。因此,通过基于Dempster-Shafer证据理论对同一只昆虫的结果进行整合,可以期待更准确的分类。这样,通过我们的方法可以实现准确的昆虫分类。在本文的最后,我们显示了实验结果,以验证该方法的有效性。

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