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用于鉴定牛寄生线虫虫卵的纹理定量特征分析。

Quantitative characterization of texture used for identification of eggs of bovine parasitic nematodes.

作者信息

Sommer C

机构信息

Danish Veterinary Laboratory, Copenhagen, Denmark.

出版信息

J Helminthol. 1998 Jun;72(2):179-82. doi: 10.1017/s0022149x00016370.

Abstract

This study investigates the use of texture, i.e. the grey level variation in digital images, as a basis for identification of strongylid eggs. Texture features were defined by algorithms applied to digital images of eggs from the bovine parasitic nematodes, Ostertagia ostertagi, Cooperia oncophora, and Oesophagostomum radiatum. The resulting data served to establish classification criteria by linear discrimination analysis, and the criteria were subsequently evaluated by cross-validations. From 25 texture features, ten features were selected by their significant discriminatory powers. Using a classification criterion based on these ten texture features, an average of 91.2% of eggs from the three species were correctly classified. All O. radiatum eggs were correctly classified, 11.8% of O. ostertagi and C. oncophora were reciprocally misclassified, and 2.9% of O. ostertagi were identified as O. radiatum. When the ten texture features were used singly an average of 51.2 to 37.9% of the species could be classified correctly. When texture was used together with the shape and size features, a higher percentage of eggs were correctly classified compared with the classification based on either texture, or shape and size. Hence, all O. radiatum were correctly classified as well as 88.3% of O. ostertagi and 91.2% of C. oncophora, resulting in an average of 93.1% correctly classified eggs. The rapid and accurate measurements of texture features may serve as a basis for identification or enhance performance of classification criteria based on egg shape/size.

摘要

本研究探讨利用纹理,即数字图像中的灰度变化,作为鉴定圆线虫卵的基础。通过应用于牛寄生线虫奥斯特他线虫、辐射食道口线虫和库柏线虫卵的数字图像的算法来定义纹理特征。所得数据用于通过线性判别分析建立分类标准,随后通过交叉验证对该标准进行评估。从25个纹理特征中,根据其显著的判别能力选择了10个特征。使用基于这10个纹理特征的分类标准,三种线虫卵的平均正确分类率为91.2%。所有辐射食道口线虫卵均被正确分类,11.8%的奥斯特他线虫和库柏线虫被相互误分类,2.9%的奥斯特他线虫被鉴定为辐射食道口线虫。当单独使用这10个纹理特征时,平均有51.2%至37.9%的线虫能够被正确分类。当纹理与形状和大小特征一起使用时,与基于纹理或形状和大小的分类相比,有更高比例的卵被正确分类。因此,所有辐射食道口线虫均被正确分类,88.3%的奥斯特他线虫和91.2%的库柏线虫也被正确分类,平均正确分类率为93.1%。纹理特征的快速准确测量可为基于虫卵形状/大小的鉴定或提高分类标准的性能提供依据。

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