基于DCT直方图量化的高效图像检索

A. Mohamed, F. Khelifi, Ying Weng, Jianmin Jiang, S. Ipson
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引用次数: 27

摘要

本文提出了一种新的简单的离散余弦变换(DCT)特征提取方法,用于加快图像检索过程中的速度和减少所需的存储空间。直接从JPEG压缩域中访问和提取图像特征。该方法从部分DCT系数中提取并构造直方图量化特征向量,用于统计所有图像块上具有相同DCT系数的系数个数。将数据库图像和查询图像等分为一个不重叠的8X8块像素,每个像素对应一个直接由离散余弦变换DCT导出的直方图量化特征向量。用户可以选择任意查询作为查询图像的主题。检索到的图像是从数据库中与查询图像具有相似度的图像,并根据欧几里得距离计算出的最接近的相似度量对相似度进行排序。实验结果表明,我们的方法可以很容易地识别出主要目标,同时在一定程度上减少了背景对图像的影响,从而提高了图像检索的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An efficient Image Retrieval through DCT Histogram Quantization
This paper proposes a new simple method of Discrete Cosine Transform (DCT) feature extraction that is used to accelerate the speed and decrease the storage needed in the image retrieving process. Image features are accessed and extracted directly from JPEG compressed domain. This method extracts and constructs a feature vector of histogram quantization from partial DCT coefficient in order to count the number of coefficients that have the same DCT coefficient over all image blocks. The database image and query image is equally divided into a non overlapping 8X8 block pixel, each of which is associated with a feature vector of histogram quantization derived directly from discrete cosine transform DCT. Users can select any query as the main theme of the query image. The retrieved images are those from the database that bear close resemblance with the query image and the similarity is ranked according to the closest similar measures computed by the Euclidean distance. The experimental results are significant and promising and show that our approach can easily identify main objects while to some extent reducing the influence of background in the image and in this way improves the performance of image retrieval.
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