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基于核函数的SVM猪肉颜色等级评定研究
引用本文:金璟,周铝,陶琳丽,张曦,王全春.基于核函数的SVM猪肉颜色等级评定研究[J].云南农业大学学报,2012,27(4):573-579.
作者姓名:金璟  周铝  陶琳丽  张曦  王全春
作者单位:1云南农业大学 经济管理学院, 云南 昆明 650201;2云南农业大学 动物科学技术学院, 云南 昆明 650201
摘    要: 为了实现用计算机和机械设备进行猪肉颜色自动化分级,本研究对猪肉样品照片进行图像处理,提取其中颜色特征参数,并进行色彩空间参数换算。通过对基于核函数的3种SVM多分类方法进行比较,选择出最适合于猪肉颜色的SVM多分类评定方法。对比结果显示,采用单独的HSV数据及RGB与HSV联合数据进行分类,分类效果好于RGB数据。RBF核函数“二叉树”SVM多分类模型,经过样本学习后,其分类的正确率可达98%;同时考虑经验风险和置信风险,其分类正确率达80%。

关 键 词:猪肉  SVM  多类别  RGB  HSV

Study on Color Classification Assessment for Pork Based on Kernel Function of SVM
JIN Jing,ZHOU Lu,TAO Lin li,ZHANG Xi,WANG Quan chun.Study on Color Classification Assessment for Pork Based on Kernel Function of SVM[J].Journal of Yunnan Agricultural University,2012,27(4):573-579.
Authors:JIN Jing  ZHOU Lu  TAO Lin li  ZHANG Xi  WANG Quan chun
Institution:1College of Economics and Management,Yunnan Agricultural University, Kunming 650201,China;
2College of Animal Science and Technology,Yunnan Agricultural University, Kunming 650201,China
Abstract:To realize the auto classification for pork color with computer and equipment, the processing for pork sample images, drawing of color characteristics and spatial data conversion was studied. With the comparison of three SVM multi classification methods based on kernel function, the most suitable SVM classification assessment methods for pork color were found. Comparison results showed that the using HSV and the combination usage of RGB and HSV had higher classification efficiency than computer recognized RGB. The accuracy of pork multi classification would be 98% after sample studies with the 'binary tree model of RBF kernel function. With the consideration of empirical risk and confidence risk at the same time, the accuracy was guaranteed to reach 80%.
Keywords:pork  SVM  multi classification  RGB  HSV
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