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基于区块位置与加权视觉语义映射的语义图像检索
引用本文:朱征宇,钟锐.基于区块位置与加权视觉语义映射的语义图像检索[J].世界科技研究与发展,2013(5):624-626,636.
作者姓名:朱征宇  钟锐
作者单位:重庆大学计算机学院,重庆400044
基金项目:科技部国家科技支撑计划重点项目(2011BAH25804)资助
摘    要:提出了一种新的图像语义映射方法WVS—RSSVM,采用自适应的NCut分割方法自动发现并图像中的区域,提取出每个区域包含了位置信息的特征,达到消除一定歧义的目的。并将这些区域采用加权的方式映射为视觉语义空间中的一个点,然后通过SVM分类的方法进行语义学习,实现对图像的语义标注。并且以SVM分类时点到边界的距离作为该点属于某个语义的隶属度,实现检索的排序。实验结果表明,该方法对表达图像的主要语义以及发现有歧义的区块代表的语义,有很好的效果。

关 键 词:视觉语义  带权映射  位置特征  支持向量机

Semantic Image Retrieval Based on Region Location and Weight Visual Semantics Mapping *
ZHU Zhengyu * * ZHONG Rui.Semantic Image Retrieval Based on Region Location and Weight Visual Semantics Mapping *[J].World Sci-tech R & D,2013(5):624-626,636.
Authors:ZHU Zhengyu * * ZHONG Rui
Institution:ZHU Zhengyu * * ZHONG Rui ( College of Computer Science, Chongqing University, Chongqing 400044)
Abstract:A novel image semantics mapping method named WVS-RSSVM is proposed, which employ self-adapting NCut to segment image in- to regions. The region features including location information is extracted to disambiguate of the regions. The image is mapped into the visual semantics space by weighted mapping method. Then its semantics are learned by SVM to annotate the image. The distance between the image feature vector and the SVM's hyperplane is used as the degree of the image belongs to the class. It's proven that in this method ,the ambiguity can be eliminated to a certain extent.
Keywords:visual semantic  weighted-mapping  location feature  SVM
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