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A content-based image retrieval system for echo images using SQL-based clustering approach

机译:使用基于SQL的聚类方法的基于内容的回声图像检索系统

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摘要

Content-based image retrieval (CBIR) consists of retrieving the most visually similar images to a given query image from a database of images. CBIR from medical image databases does not aim to replace the physician by predicting the disease of a particular case but to assist him/her in diagnosis. The visual characteristics of a disease carry diagnostic information and oftentimes visually similar images correspond to the same disease category. By consulting the output of a CBIR system, the physician can gain more confidence in his/her decision or even consider other possibilities. In this paper, we aim at building an efficient content-based echo image retrieval (CBEIR) system. Echocardiography provides important morphological and functional details of the heart which can be used for the diagnosis of various cardiac diseases. Normally two-dimensional (2D) echo and colour Doppler image modalities are used for analysis and clinical decisions. From 2D echo images, features such as dimensions of cardiac chambers (area, volume, ejection fraction, etc.) are extracted, whereas texture properties, kurtosis, skewness, edge gradient, colour histogram, etc., are extracted from colour Doppler images. Hence, this forms a multi-feature descriptor which then is used to retrieve similar images from the database. A novel clustering approach merged with the traditional CBIR model is used for development in order to speed up the retrieval and enhance the accuracy of retrieval. The main focus of our work is the following: efficient segmentation algorithm, accurate detection of cardiac chambers, new and fast method to obtain colour portion of the Doppler image, and finally is able to categorise the type of disease and the severity level. These domain-specific low-level features are very important to build a reliable and scalable CBIR model. The similarity values are obtained by Euclidean distance metric. The feature database is basically a set of quantitative and qualitative features of the images. Our image database is populated with diverse set of approximately 623 images extracted from 60 normal and abnormal patients acquired from a local cardiology Hospital. Exhaustive experimentation has been conducted with various input query images and combinations of features to compute the retrieval efficiency which are validated by domain experts. It has been shown through recall-precision graphs that the proposed method outperforms compared to others reported in the past.
机译:基于内容的图像检索(CBIR)包括从图像数据库中检索与给定查询图像最相似的图像。医学图像数据库中的CBIR并非旨在通过预测特定病例的疾病来替代医师,而是协助其进行诊断。疾病的视觉特征带有诊断信息,通常在视觉上相似的图像对应于相同的疾病类别。通过咨询CBIR系统的输出,医生可以对自己的决定更有信心,甚至可以考虑其他可能性。在本文中,我们旨在构建一个有效的基于内容的回声图像检索(CBEIR)系统。超声心动图提供了重要的心脏形态和功能细节,可用于诊断各种心脏病。通常,二维(2D)回波和彩色多普勒图像模态用于分析和临床决策。从2D回波图像中提取诸如心腔尺寸(面积,体积,射血分数等)之类的特征,而从彩色多普勒图像中提取纹理特性,峰度,偏度,边缘梯度,颜色直方图等。因此,这形成了一个多特征描述符,然后将其用于从数据库中检索相似的图像。一种新颖的聚类方法与传统的CBIR模型相结合,用于开发,以加快检索速度并提高检索的准确性。我们的工作重点是:高效的分割算法,准确的心腔检测,新的快速获取多普勒图像彩色部分的方法,最后能够对疾病类型和严重程度进行分类。这些特定于域的底层功能对于构建可靠且可扩展的CBIR模型非常重要。通过欧几里得距离度量获得相似性值。特征数据库基本上是图像的一组定量和定性特征。我们的图像数据库由从当地心脏病医院获得的60例正常和异常患者中提取的大约623幅图像组成的各种集合组成。已经对各种输入查询图像和功能组合进行了详尽的实验,以计算检索效率,这些都得到了领域专家的验证。通过查全精度图显示,与过去报告的其他方法相比,该方法的性能优于其他方法。

著录项

  • 来源
    《The imaging science journal》 |2012年第5期|p.256-271|共16页
  • 作者单位

    Department of Computer Science and Engineering, Amrita Vishwa, Vidyapeetham, Amrita School of Engineering, Bangalore, India;

    Tata Consultancy Services, Parallel Computing Division, Bangalore, India;

    Department of Computer Science and Engineering, Amrita Vishwa, Vidyapeetham, Amrita School of Engineering, Bangalore, India;

    Department of Echocardiography, Sri Jayadeva Institute of Cardiovascular Sciences and Research, Bangalore, India;

    Sri Jayadeva Institute of Cardiovascular Sciences and Research, Bangalore, India;

  • 收录信息 美国《科学引文索引》(SCI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    echocardiography; CBIR; segmentation; doppler image;

    机译:超声心动图CBIR;分割;多普勒图像;

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