改进的加权特征融合算法及其在图像检索中的应用

Mei Wang, Li Wang
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摘要

为了提高图像检索的平均查全率和平均查准率,提出了一种改进的加权特征融合算法。首先,采用基于7个中心矩的矩不变方法提取图像的形状特征;同时,利用灰度共生矩阵计算图像的纹理特征。然后分别对向量的元素进行归一化处理。下一步,计算欧几里得距离、欧几里得距离的平方和城市街区距离。得到这三种距离的均值,分别作为形状距离和纹理距离。最后,对加权特征向量进行融合,得到图像之间的相似度,并以此为度量基础实现图像检索。实验表明,该方法实现了图像检索的实际效果,提高了平均查全率和平均查准率。
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An Improved Fusion Algorithm of the Weighted Features and its Application in Image Retrieval
In order to improve the average recall rate and the average precision rate of image retrieval, an improved fusion algorithm of the weighted features is presented. Firstly,the shape features of images are extracted by using the moment invariant method based on 7 central moments. Meanwhile,the texture features of images are calculated by using the Gray-level Co-occurrence matrix. Then the elements of the vectors are normalized respectively. In the next step, the Euclidian distance,the squared Euclidian distance and the City-Block distance are calculated. The Mean values of the 3 kinds of distances are obtained and used as the shape distance and the texture distance. Finally,the weighted feature vectors are fused and the similarities between images are obtained and used as the measure bases to implement the image retrieval. The experiments show that the tangible results of image retrieval are realized and the average recall rate and the average precision rate are improved.
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