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基于DT-CWT和LS-SVM的苹果果梗/花萼和缺陷识别
引用本文:宋怡焕,饶秀勤,应义斌. 基于DT-CWT和LS-SVM的苹果果梗/花萼和缺陷识别[J]. 农业工程学报, 2012, 28(9): 114-118
作者姓名:宋怡焕  饶秀勤  应义斌
作者单位:浙江大学生物系统工程与食品科学学院,杭州,310058
基金项目:国家自然科学基金(30825027)
摘    要:该文提出了一种基于双树复小波变换(DT-CWT)和最小二乘支持向量机(LS-SVM)区分苹果的果梗/花萼和缺陷的方法。对苹果图像使用DT-CWT分解,使用变换后得到的高频子带系数的均值和方差构造特征向量,然后使用最小支持二乘向量机作为分类器进行分类。对180幅苹果图像进行了试验。讨论了DT-CWT分解层数以及目标图像大小对分类正确率的影响。试验结果显示,使用3层DT-CWT对大小为64×64子图像进行小波分解提取纹理特征,能达到最好的分类效果,分类正确率可以达到95.6%。

关 键 词:机器视觉  最小二乘支持向量机(LS-SVM)  识别  特征提取  双树复小波变换(DT-CWT)  缺陷  果梗/花萼  苹果
收稿时间:2011-09-01
修稿时间:2012-03-18

Apple stem/calyx and defect discrimination using DT-CWT and LS-SVM
Song Yihuan,Rao Xiuqin and Ying Yibin. Apple stem/calyx and defect discrimination using DT-CWT and LS-SVM[J]. Transactions of the Chinese Society of Agricultural Engineering, 2012, 28(9): 114-118
Authors:Song Yihuan  Rao Xiuqin  Ying Yibin
Affiliation:(College of Biosystems Engineering and Food Science, Zhejiang University, Hangzhou 310058, China)
Abstract:This paper proposed a method for apple stem/calyx and defects discrimination by integrating the Dual Tree Complex Wavelet Transform (DT-CWT) and Least Squares Support Vector Machines (LS-SVM) method. The DT-CWT was used to decompose the apple images, and the feature vectors were generated by computing mean and standard deviation from the coefficients of individual wavelet subbands and the LS-SVM was used for classification. 85 apple images were tested, in which there were 25 stem and calyx images respectively and 35 defect images. Moreover, the influence of the DT-CWT decomposition levels on the classification rate was analyzed. The result showed that with 3-level DT-CWT the best classification result could be obtained, and an overall detection rate of 97.1% was achieved.
Keywords:computer vision   least squares support vector machines (LS-SVM)   classification   feature extraction   dual tree complex wavelet transform (DT-CWT)   defects stem/calyx   apple
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