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基于WBCT与平滑共生矩阵的图像检索 被引量:1

Texture Image Retrieval Based on WBCT and Smooth Co-Occurrence Matrix
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摘要 利用WBCT变换良好的稀疏特性及其能准确地捕获图像中边缘信息的特性,分析了纹理图像WBCT系数的统计特征,提出了一种滤波算法。该算法根据纹理图像WBCT系数分布的特点,提取纹理特征。加入在低频子带上提取的灰度—平滑共生矩阵统计量,形成最终的特征向量。仿真实验结果表明,该方法在纹理图像检索上有一定的优越性。 Based on WBCT' s characteristics of good sparsity and accurately capturing smooth contours in natural images, the statistical features for WBCT coefficient of texture image is analyzed, and a filter algorithm is proposed. According to distribution characteristics of WBCT coefficients, the texture feature is extracted. By adding the statistic properties of the gray level co-occurrence matrix extracted from the low-frequency sub-band the final characteristic vector is thus formed. The simulation experiment indicates that this method holds certain superiority in the texture image retrieval.
作者 向丽
出处 《通信技术》 2009年第12期150-152,共3页 Communications Technology
基金 国家863计划(2006AA01Z119) 江苏省自然科学基金-青年科技创新人才启动项目资助(BK2007594)
关键词 滤波算法 特征提取 图像检索 filter algorithm feature extraction image retrieval
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参考文献5

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