1. 杭州电子科技大学图形图像研究所,浙江,杭州,310018
2. 浙江工业大学计算机科学与技术学院,浙江,杭州,310023
3. 杭州电子科技大学图形图像研究所浙江杭州,310018
4. 浙江工业大学计算机科学与技术学院浙江杭州,310023
纸质出版:2013
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方景龙, 王万良, 王兴起, 等. 求解多示例问题的支持向量数据描述方法[J]. 电子学报, 2013,41(4):763-767.
FANG Jing-long, WANG Wan-liang, WANG Xing-qi, et al. Support Vector Data Description Method for Solving Multiple Instance Problems[J]. Acta Electronica Sinica, 2013, 41(4): 763-767.
方景龙, 王万良, 王兴起, 等. 求解多示例问题的支持向量数据描述方法[J]. 电子学报, 2013,41(4):763-767. DOI: 10.3969/j.issn.0372-2112.2013.04.023.
FANG Jing-long, WANG Wan-liang, WANG Xing-qi, et al. Support Vector Data Description Method for Solving Multiple Instance Problems[J]. Acta Electronica Sinica, 2013, 41(4): 763-767. DOI: 10.3969/j.issn.0372-2112.2013.04.023.
将支持向量数据描述方法引入到多示例学习中
提出了三种基于SVDD的多示例学习方法:基于包分类和示例分类的SVDD多示例学习方法MI-SVDD和mi-SVDD
以及基于正示例预测的SVDD多示例学习方法SVDD-MILD_I.在MUSK数据集上的实验结果表明
MI-SVDD方法和mi-SVDD方法的精度与MI-SVM方法和mi-SVM的总体相当
SVDD-MILD_I方法的精度比较高
超过了我们已知的目前已发表的最好结果;对COREL图像库进行基于内容的图像检索的实验表明
SVDD-MILD_I方法的精度较高
并且比较好地区分了容易混淆的Beach类图像与Mountains类图像.
Support Vector Data Description(SVDD)is introduced into multiple instance learning.Three multi-instance learning methods based on SVDD are presented
which include Multiple Instance Learning based on SVDD and bag classification(mi-SVDD)or instance classification(MI-SVDD)
and Multiple Instance Learning based on SVDD and positive instance prediction(SVDD-MILD-I).Experimental results on MUSK dataset show that precisions of mi-SVDD and MI-SVDD are quite comparable to those of mi-SVM and MI-SVM;SVDD-MILD-I can get highest accuracy among all the methods known so far.Experimental results in the application of content based image retrieval in COREL image collections demonstrate that precision achieved by SVDD-MILD_I is higher than the others.Additionally
SVDD-MILD_I discriminates the misclassification-prone images between Beach and Mountains quite well.
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