基于泽尼克矩和小波变换的特征图像检索系统

D. Sudarvizhi
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引用次数: 4

摘要

在图像处理研究领域中,图像检索被广泛应用于各种应用中。对图像检索的需求日益增加,是目前最令人兴奋的研究领域。在图像检索系统中,特征是对图像进行索引、检索和分类的最重要的过程。对于计算机系统来说,自动索引、有效地存储和检索大型图像集合是一项关键任务。目前已经实现了几种检索系统来克服这些问题,但在图像检索过程中仍然存在速度和准确性不足的问题。首先,分析了图像检索中存在的各种性能下降问题,并对已有的方法和结果进行了分析和比较。其次,找出有效的方法来显著提高检索系统的准确率。这项工作提供了一个基于小波变换(DWT)和泽尼克矩的低级特征提取的框架。在此基础上,利用距离度量对图像进行检索。泽尼克矩由于其强度和叙述能力,构成了一个强大的形状描述符。实验结果表明,与现有的基于离散小波变换的颜色特征和边缘特征相结合的检索方法相比,该方法的检索精度有了显著提高。本文使用wang的图像数据集进行实验。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Feature based image retrieval system using Zernike moments and Daubechies Wavelet Transform
In image processing research field, image retrieval is extensively used in various application. Increasing need of the image retrieval, it is quiet most exciting research field. In image retrieval system, features are the most significant process used for indexing, retrieving and classifying the images. For computer systems, automatic indexing, storing and retrieving larger image collections effectively are a critical task. Nowadays several retrieval systems were implemented to overcome these issues but still there is a lack of speed and accuracy during image retrieval process. First, address the various issues on performance degradation of image retrieval then analyze and compare the methods and results in previous work. Second, discover the effective approach to be used to increase the accuracy of retrieval system significantly. This work provides a framework based on low level features extraction using Daubechies Wavelet Transform (DWT) and Zernike moments. Based on that features images are retrieved by using the distance measure. Zernike moments constitute a powerful shape descriptor due to its strength and narrative capability. Experimental results shows that our scheme provides significant improvement on retrieval accuracy compared to existing system based on the combination of both the color and edge features by using Discrete Wavelet Transform. In this paper, wang's image dataset is used for experiments.
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