基于加权关联反馈的图像模糊化图像语义检索

Sajjad Imandoost, H. Sadoghi Yazdi, J. Haddadnia, J. Haddadnia
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引用次数: 1

摘要

本文提出了一种基于图像特征向量加权相关反馈的图像模糊化图像检索方法。目前工作的核心属性是利用模糊方法对图像进行检索,并对数据库中的查询图像和相似图像进行关注反馈。首先,通过模糊C均值(FCM)算法将每张图像的颜色特征(Hue)和饱和度(S)量化为20个bin。然后利用KNN算法对每张图像的特征向量进行模糊化处理,并对对应的图像进行20个高斯函数处理。利用图像的协方差矩阵,从特征的角度对图像周围的数据进行分散,使得相似样本的检索变得很好。本文的重点是提出了一种新的相关反馈方法。在用户关注图像语义组权重的关联反馈中,改变属于每个语义组的图像权重。在一个图像数据库上得到的结果表明,我们的方法相对于[1]的数字迭代精度更好。本文使用的图像均选自Corel数据库和Simplicity项目。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Image semantic retrieval using image fuzzification based on weighted relevance feedback
In this paper a new approach is presented for image retrieval using image fuzzification based on weighted relevance feedback on image feature vectors. The mind attributes of present work are the image retrieval using fuzzy approach and the relevance feedback by attention of the query image and the resemble images in the database. At the first the color features (Hue) and saturation (S) for each image by help of Fuzzy C means (FCM) algorithm are quantized to 20 bins. Then the feature vectors for each image are become fuzzy using KNN algorithm and for corresponding image, the 20 Gaussian functions have been regarded. The data scatter in around of each image from viewpoint of features by help of covariance matrix of each image is caused the retrieval of similar samples become excellent. The dominant point of this paper is a new approach for relevance feedback. In the relevance feedback by attention of weighting of image semantic groups by user, the image weight which belongs to each semantic group is changed. The obtained results on an image database show that our approach accuracy versa the number iteration with respect to [1] is better. The images using in this paper, are selected from Corel database and Simplicity project.
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