基于多类视觉问题的基于内容的乳房x线图像检索

F. Siyahjani, E. Fatemizadeh
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引用次数: 1

摘要

由于从过去解决的病例中获得的专业知识在医学应用中起着重要的作用,并且从各种病例中获得的图像对异常的诊断有很大的贡献,因此基于内容的医学图像检索已成为许多科学家的活跃研究领域。在本文中,我们提出了一个从大型数据库中检索视觉相似图像的新框架,其中视觉相关性与语义类别相似度同等重要。我们使用优化的小波变换作为图像的多分辨率分析,提取不同分辨率的各种统计SGLDM特征,然后在减少特征空间后使用纠错码来解决文章前面介绍的存在的多类视觉问题,我们在DDSM数据库提供的1000张乳房x光片上实现了该算法,该数据库包含2500份研究和专家提供的注释。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Content based mammogram image retrieval based on the multiclass visual problem
Since expertise elicited from past resolved cases plays an important role in medical application and images acquired from various cases have a great contribution to diagnosis of the abnormalities, Content based medical image retrieval has become an active research area for many scientists, In this article we proposed a new framework to retrieve visually similar images from a large database, in which visual relevance is regarded as much as the semantic category similarity, we used optimized wavelet transform as the multi-resolution analysis of the images and extracted various statistical SGLDM features from different resolutions then after reducing feature space we used error correcting codes in order to untwist the existing multiclass visual problem introduced in preceding parts of the article, we implemented proposed algorithm on the 1000 mammograms provided by the DDSM database which consist of 2500 studies and their annotations provided by specialists.
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