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首页> 外文期刊>Electronic Letters on Computer Vision and Image Analysis: ELCVIA >A Novel Angular Texture Pattern (ATP) Extraction Method for Crop and Weed Discrimination Using Curvelet Transformation
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A Novel Angular Texture Pattern (ATP) Extraction Method for Crop and Weed Discrimination Using Curvelet Transformation

机译:基于Curvelet变换的作物和杂草鉴别的新型角纹理图案提取方法。

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摘要

Weed management is the most significant process in the agricultural applications to improve the crop productivity rate and reduce the herbicide application cost. Existing weed detection techniques does not yield better performance due to the complex background and illumination variation. Hence, there arises a need for the development of effective weed identification technique. To overcome this drawback, this paper proposes a novel Angular Texture Pattern (ATP) Extraction Method for crop and weed discrimination using curvelet transformation. In our proposed work, Adaptive Median Filter (AMF) is used for filtering the impulse noise from the image. Plant image identification is performed using green pixel extraction and K-means clustering. Wrapping based Curvelet transform is applied to the plant image. Feature extraction is performed to extract the angular texture pattern of the plant image. Particle Swarm Optimization (PSO) based Differential Evolution Feature Selection (DEFS) approach is applied to select the optimal features. Then, the selected features are learned and passed through an RVM based classifier to find out the weed. Edge detection and contouring is performed to identify the weed in the plant image. Fuzzy rule-based approach is applied to detect the low, medium and high levels of the weed patchiness. From the experimental results, it is clearly observed that the accuracy of the proposed approach is higher than the existing Support Vector Machine (SVM) based approaches. The proposed approach achieves better performance in terms of Hausdorff distance, Jaccard distance, Dice distance, accuracy, sensitivity, and specificity.
机译:杂草治理是农业应用中最重要的过程,它可以提高农作物的生产率并降低除草剂的施用成本。由于复杂的背景和光照变化,现有的杂草检测技术无法提供更好的性能。因此,需要开发有效的杂草识别技术。为了克服这一缺点,本文提出了一种新的利用小波变换对作物和杂草进行鉴别的角度纹理图案(ATP)提取方法。在我们提出的工作中,自适应中值滤波器(AMF)用于从图像中滤除脉冲噪声。使用绿色像素提取和K-均值聚类进行植物图像识别。将基于包装的Curvelet变换应用于植物图像。执行特征提取以提取植物图像的角度纹理图案。基于粒子群优化(PSO)的差分进化特征选择(DEFS)方法被用于选择最优特征。然后,学习选定的特征并通过基于RVM的分类器找出杂草。进行边缘检测和轮廓处理以识别植物图像中的杂草。基于模糊规则的方法可用于检测杂草斑块的低,中和高水平。从实验结果可以清楚地看到,该方法的准确性高于现有的基于支持向量机(SVM)的方法。所提出的方法在Hausdorff距离,Jaccard距离,Dice距离,准确性,灵敏度和特异性方面都实现了更好的性能。

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