Convoluted Neighborhood-Based Ordered-Dither Block Truncation Coding for Ear Image Retrieval

IF 0.8 Q4 COMPUTER SCIENCE, SOFTWARE ENGINEERING
M. N. Sowmya, K. Prasanna
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引用次数: 0

Abstract

Image retrieval is a significant and hot research topic among researchers that drives the focus of researchers from keyword toward semantic-based image reconstruction. Nevertheless, existing image retrieval investigations still have a shortage of significant semantic image definition and user behavior consideration. Hence, there is a necessity to offer a high level of assistance towards regulating the semantic gap between low-level visual patterns and high-level ideas for a better understanding between humans and machines. Hence, this research devises an effective medical image retrieval strategy using convoluted neighborhood-based Ordered-dither block truncation coding (ODBTC). The developed approach is devised by modifying the ODBTC concept using a convoluted neighborhood mechanism. Here, the convoluted neighborhood-based color co-occurrence feature (CCF) and convoluted neighborhood-based bit pattern feature (BBF) are extracted. Finally, cross-indexing is performed to convert the feature points into binary codes for effective image retrieval. Meanwhile, the proposed convoluted neighborhood-based ODBTC has achieved maximum precision, recall, and f-measure with values of 0.740, 0.680, and 0.709.
基于卷积邻域的有序抖动块截断编码在耳朵图像检索中的应用
图像检索是一个重要而热门的研究课题,它将研究的重点从关键词转向基于语义的图像重建。然而,现有的图像检索研究仍然缺乏重要的语义图像定义和用户行为考虑。因此,有必要为调节低级视觉模式和高级思想之间的语义差距提供高层次的帮助,以便更好地理解人和机器之间的关系。因此,本研究设计了一种有效的基于卷积邻域的有序抖动块截断编码(ODBTC)的医学图像检索策略。所开发的方法是通过使用复杂的邻域机制修改ODBTC概念来设计的。在这里,提取了基于卷积邻域的颜色共现特征(CCF)和基于卷积邻域的位模式特征(BBF)。最后,进行交叉索引,将特征点转换为二进制代码,实现有效的图像检索。同时,本文提出的基于卷积邻域的ODBTC达到了最高的精度、召回率和f-measure值,分别为0.740、0.680和0.709。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
International Journal of Image and Graphics
International Journal of Image and Graphics COMPUTER SCIENCE, SOFTWARE ENGINEERING-
CiteScore
2.40
自引率
18.80%
发文量
67
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