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首页> 外文期刊>Indian Journal of Science and Technology >Defect Detection in Pattern Texture Analysis Based on Kernel Selection in Support Vector Machine
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Defect Detection in Pattern Texture Analysis Based on Kernel Selection in Support Vector Machine

机译:基于支持向量机核选择的图案纹理分析中的缺陷检测。

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Background/Objective: Finding defects in real world application is assorted process. A robust and novel method is designed to select fine distinctions of features and classifying the images lead to improve the quality of products in industrial engineering. Methods/Statistical Analysis: Image feature accentuate, feature selection and classification are the different stages in pattern texture analysis. The efficiency of the overall system depends on efficiency of individual stages. Findings: Computational complexity of kernel algorithms are more intelligent than features .We analyzed and reviewed linear kernel, Quadratic Kernel, Polynomial Kernel, Sigmoid Kernel of SVM to classify the patterns effectively for classifying the defects. Improvements/Applications: Here kernel functions such as the polynomial kernel functions are yield superb performance ratios.
机译:背景/目的:发现现实应用中的缺陷是各种各样的过程。设计了一种健壮且新颖的方法来选择特征的精细区分和对图像进行分类,从而提高工业工程中的产品质量。方法/统计分析:图像特征强调,特征选择和分类是图案纹理分析的不同阶段。整个系统的效率取决于各个阶段的效率。结果:内核算法的计算复杂度比功能更智能。我们分析和回顾了SVM的线性内核,二次内核,多项式内核,Sigmoid内核,以有效地对模式进行分类以对缺陷进行分类。改进/应用:在这里,诸如多项式内核函数之类的内核函数具有出色的性能比。

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