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Automatic identification of butterfly species based on HoMSC and GLCMoIB

机译:基于HoMSC和GLCMoIB的蝶类自动识别

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摘要

Automatic identification is an efficient technology for the identification of butterfly species and pest control. As the major agriculture and forest pest, butterflies can be accurately classified based on the taxonomic characters. However, such identification can be only achieved by a few insect experts with years of experience. In the study, the shape and texture of butterflies were investigated for the automatic identification of butterfly species in the digital images: Histograms of multi-scale curvature (HoMSC) and gray-level co-occurrence matrix of image blocks (GLCMoIB) were used to describe the shape and texture of butterfly wings, respectively. To get an accurate identification result, a weight-based k-nearest neighbor classifier was designed. In addition, 750 images of 50 butterfly species were used for the identification test. The accuracy rate of this automatic identification method reached 98%. The result suggested that the HoMSC and GLCMoIB features can be efficient for the identification of butterfly species.
机译:自动识别是一种用于识别蝴蝶物种和控制害虫的有效技术。作为主要的农业和森林害虫,可以根据分类特征对蝴蝶进行准确分类。但是,只有少数具有多年经验的昆虫专家才能实现这种鉴定。在研究中,研究了蝴蝶的形状和质地以自动识别数字图像中的蝴蝶种类:使用多尺度曲率直方图(HoMSC)和图像块的灰度共现矩阵(GLCMoIB)描述蝴蝶翅膀的形状和质地。为了获得准确的识别结果,设计了基于权重的k最近邻分类器。另外,使用了50种蝴蝶种类的750张图像进行了鉴定测试。这种自动识别方法的准确率达到98%。结果表明,HoMSC和GLCMoIB特征可以有效地鉴定蝴蝶物种。

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