Content based image retrieval by IPP algorithm

Jia-Yin Song, Zunwen He
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引用次数: 3

Abstract

In order to realize the content-based image retrieval (CBIR), some characteristics of the images should be extracted like color, texture and shape. The extremely important thing in CBIR is to search the most similar database images to match the query image, which needs to improve the precision. This paper proposes an Improving Precision Priority (IPP) algorithm integrating vital features and the query method to improve performance. Proposed IPP algorithm has two phases. In the first phase, both of the query image and database images are divided into several blocks respectively. After that, we calculate the color histogram of each block. Then we take Euclidean distance to compare the similarities to complete the first round of retrieval. To calculate the distance, we allocate different blocks to different weights, the blocks of the central part always containing much useful information should be allocated more weight. And the surrounding part are allocated less and the corners have the smallest weight. All of the distances of the small blocks are accumulated together to be the distance of the whole image. In this phase we can retrieve some related images from the database denoting as result A. In the second phase, shape characteristics of result A are extracted using Hu moment invariants. After that, we calculate the invariant moments similarities between the query image and those of result A images. The most similar images are shown as the final result. IPP algorithm can increase the precision.
基于内容的IPP算法图像检索
为了实现基于内容的图像检索(CBIR),需要提取图像的颜色、纹理和形状等特征。在CBIR中,最重要的是搜索最相似的数据库图像来匹配查询图像,这需要提高精度。本文提出了一种结合重要特征和查询方法的改进精度优先级(IPP)算法,以提高性能。本文提出的IPP算法分为两个阶段。在第一阶段,将查询图像和数据库图像分别分成几个块。然后,我们计算每个块的颜色直方图。然后用欧几里得距离比较相似度,完成第一轮检索。为了计算距离,我们给不同的块分配不同的权重,中心部分总是包含很多有用信息的块应该分配更多的权重。并且周围部分分配少,边角处重量最小。所有小块的距离累积在一起成为整个图像的距离。在这一阶段,我们可以从数据库中检索到一些相关的图像,表示结果A。第二阶段,使用Hu矩不变量提取结果A的形状特征。然后,我们计算查询图像与结果A图像的不变矩相似度。最相似的图像被显示为最终结果。IPP算法可以提高精度。
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