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Improved Directional Local Extrema Patterns as a Feature Vector for CBIR

机译:改进了定向本地极值模式作为CBIR的特征向量

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-In order to get the local structures of an image ,the Local Binary Patterns and its variants are used. These are based on obtaining the difference in intensity values of the target pixel and its neighbors and assigning some value to the center pixel. However, the directions are not considered in these patterns. The Directional Extrema Patterns are used to encode the relationship between the reference pixel and its neighbors by computing the edge information in four directions. The complexity is high when the DLEP is used as a feature vector whose size is n x n. The proposed work aims at developing a feature vector for Content Based Image Retrieval system. Further, the search for similarity can be made simple by discarding many images at every level by implementing the search tree approach due to which the retrieval speed increases which is a primary concern in image retrieval.
机译:- 在命令获取图像的本地结构,使用本地二进制模式及其变体。这些是基于获得目标像素及其邻居的强度值的差异,并将一些值分配给中心像素。但是,在这些模式中不考虑方向。方向极值模式用于通过在四个方向上计算边缘信息来编码参考像素及其邻居之间的关系。当DLEP用作特征向量时,复杂性很高,其大小为n x n。所提出的工作旨在开发基于内容的图像检索系统的特征向量。此外,通过实现搜索树方法,可以通过在图像检索中的主要问题上实现搜索树方法来丢弃每个级别的许多图像来简化对相似性的搜索。

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