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Fast image retrieval using error diffusion block truncation coding and unsupervised clustering

机译:使用错误扩散块截断编码和无监督聚类进行快速图像检索

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摘要

Content Based Image Retrieval (CBIR) employing compression technique and unsupervised clustering focus on the faster retrieval of desired images with high amount of accuracy. In this paper color images are indexed using the features extracted from Error Diffusion Block Truncation Coding (EDBTC). A new framework of CBIR with unsupervised clustering is used here in which the amount of time required for comparing the target and query image is significantly reduced. Experimental result shows that the proposed method not only achieves a good quality of image compression but achieves a significant reduction in the amount of time required for image retrieval. The proposed method was able to obtain an average of 4 to 5 sec difference in performance time as compared to the old retrieval method without clustering. The speed of retrieval varies linearly with the number of images in the database i.e. an increase in database images showed significant increase in the system performance.
机译:采用压缩技术和无监督聚类的基于内容的图像检索(CBIR)专注于以较高的准确性快速检索所需图像。在本文中,使用从错误扩散块截断编码(EDBTC)中提取的特征对彩色图像进行了索引。这里使用具有无监督聚类的CBIR的新框架,其中显着减少了比较目标图像和查询图像所需的时间。实验结果表明,该方法不仅可以实现良好的图像压缩质量,而且可以显着减少图像检索所需的时间。与没有聚类的旧检索方法相比,所提出的方法能够获得平均4到5秒的执行时间差异。检索速度随数据库中图像的数量线性变化,即数据库图像的增加表明系统性能的显着提高。

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