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Image pattern classification for the identification of disease causing agents in plants

机译:图像模式分类用于识别植物中的致病因子

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This study reports a machine vision system for the identification of the visual symptoms of plant diseases, from coloured images. Diseased regions shown in digital pictures of cotton crops were enhanced, segmented, and a set of features were extracted from each of them. Features were then used as inputs to a Support Vector Machine (SVM) classifier and tests were performed to identify the best classification model. We hypothesised that given the characteristics of the images, there should be a subset of features more informative of the image domain. To test this hypothesis, several classification models were assessed via cross-validation. The results of this Study Suggested that: texture-related features might be used as discriminators when the target images do not follow a well defined colour or shape domain pattern: and that machine vision systems might lead to the successful discrimination Of targets when fed with appropriate information.
机译:这项研究报告了一种机器视觉系统,用于从彩色图像中识别植物病害的视觉症状。增强,分割了棉花数字图像中显示的患病区域,并从它们的每一个中提取了一组特征。然后将特征用作支持向量机(SVM)分类器的输入,并进行测试以识别最佳分类模型。我们假设在给定图像特征的情况下,应该有一个特征子集,这些特征子集对图像域的信息更为丰富。为了检验这个假设,通过交叉验证评估了几种分类模型。这项研究的结果表明:当目标图像未遵循明确定义的颜色或形状域图案时,与纹理相关的特征可以用作判别器;并且在适当的条件下,机器视觉系统可能成功识别目标信息。

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