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首页> 外文期刊>Iranian Journal of Fisheries Sciences >Identification of selected monogeneans using image processing, artificial neural network and K-nearest neighbor
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Identification of selected monogeneans using image processing, artificial neural network and K-nearest neighbor

机译:使用图像处理,人工神经网络和k最近邻居鉴定所选的单义

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Over the last two decades, improvements in developing computational tools have made significant contributions to the classification of images of biological specimens to their corresponding species. These days, identification of biological species is much easier for taxonomists and even non-taxonomists due to the development of automated computer techniques and systems. In this study, we developed a fully automated identification model for monogenean images based on the shape characters of the haptoral organs of eight species: Sinodiplectanotrema malayanum, Diplectanum jaculator, Trianchoratus pahangensis, Trianchoratus lonianchoratus, Trianchoratus malayensis, Metahaliotrema ypsilocleithru, Metahaliotrema mizellei and Metahaliotrema similis. Linear Discriminant Analysis (LDA) method was used to reduce the dimension of extracted feature vectors which were then used in the classification with K-Nearest Neighbor (KNN) and Artificial Neural Network (ANN) classifiers for the identification of monogenean specimens of eight species. The need for the discovery of new characters for identification of species has been acknowledged for log by systematic parasitology. Using the overall form of anchors and bars for extraction of features led to acceptable results in automated classification of monogeneans. To date, this is the first fully automated identification model for monogeneans with an accuracy of 86.25% using KNN and 93.1% using ANN.
机译:在过去二十年中,开发计算工具的改进对其对应物种的生物样本图像分类作出了重大贡献。如今,由于自动化计算机技术和系统的发展,对生物学家甚至非分类主义者的生物学家甚至非分类主义者的鉴定要容易得多。在这项研究中,我们基于八种静脉器官的形状特征开发了一个全自动识别模型:Sinodiplectanotrema Malayanum,Outodancum jaculator,Trianchoratus彭亨斯,Trianchoratus Lonianchoratus,Trianchoratus Malayensis,Metahaliotrema Mizellei和Metahaliotrema Similis 。线性判别分析(LDA)方法用于减少提取的特征载体的尺寸,然后用K-Collect邻(knn)和人工神经网络(ANN)分类器进行分类,用于鉴定八种物种的单一标本。通过系统寄生虫学确认对识别物种进行鉴定的新角色的需求。使用锚和条形的整体形式用于提取特征导致MonogeneAls自动分类的可接受结果。迄今为止,这是使用ANN使用KNN和93.1%的精度为86.25%的单义性自动化识别模型。

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