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首页> 外文期刊>International Journal on Computer Science and Engineering >Classification of Herbs Plant Diseases via Hierarchical Dynamic Artificial Neural Network after Image Removal using Kernel Regression Framework
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Classification of Herbs Plant Diseases via Hierarchical Dynamic Artificial Neural Network after Image Removal using Kernel Regression Framework

机译:基于核回归框架的图像去除后基于层次动态人工神经网络的中草药植物病害分类

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When herbs plants has disease, they can display a range of symptoms such as colored spots, or streaks that can occur on the leaves, stems, and seeds of the plant. These visual symptoms continuously change their color, shape and size as the disease progresses. Once the image of a target is captured digitally, a myriad of image processing algorithms can be used to extract features from it. The usefulness of each of these features will depend on the particular patterns to be highlighted in the image. A key point in the implementation of optimal classifiers is the selection of features that characterize the image. Basically, in this study, image processing and pattern classification are going to be used to implement a machine vision system that could identify and classify the visual symptoms of herb plants diseases. The image processing is divided into four stages: Image Pre-Processing to remove image noises (Fixed-Valued Impulse Noise, Random-Valued Impulse Noise and Gaussian Noise), Image Segmentation to identify regions in the image that were likely to qualify as diseased region, Image Feature Extraction and Selection to extract and select important image features and Image Classification to classify the image into different herbs diseases classes. This paper is to propose an unsupervised diseases pattern recognition and classification algorithm that is based on a modified Hierarchical Dynamic Artificial Neural Network which provides an adjustable sensitivity-specificity herbs diseases detection and classification from the analysis of noise-free colored herbs images. It is also to proposed diseases treatment algorithm that is capable to provide a suitable treatment and control for each identified herbs diseases.
机译:当草药植物患病时,它们会表现出一系列症状,例如彩色斑点或植物叶片,茎和种子上可能出现的条纹。随着疾病的进展,这些视觉症状会不断改变其颜色,形状和大小。一旦以数字方式捕获了目标的图像,就可以使用无数的图像处理算法从中提取特征。这些功能中每一个的有用性将取决于要在图像中突出显示的特定图案。实施最佳分类器的关键是选择表征图像的特征。基本上,在这项研究中,图像处理和模式分类将用于实现机器视觉系统,该系统可以识别和分类草本植物疾病的视觉症状。图像处理分为四个阶段:图像预处理以去除图像噪声(固定值脉冲噪声,随机值脉冲噪声和高斯噪声),​​图像分割以识别图像中可能有资格作为患病区域的区域,图像特征提取和选择以提取和选择重要的图像特征,并通过图像分类将图像分类为不同的草药疾病类别。本文提出了一种基于改进的层次动态人工神经网络的无监督疾病模式识别和分类算法,该算法通过对无噪声彩色草药图像的分析提供了可调的灵敏度-特异性草药疾病检测和分类。还提出了能够为每种识别出的草药疾病提供适当治疗和控制的疾病治疗算法。

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