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Semantics-sensitive integrated matching for picture libraries and biomedical image databases.

机译:图片库和生物医学图像数据库的语义敏感集成匹配。

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The need for efficient content-based image retrieval has increased tremendously in many application areas such as biomedicine, military, commerce, education, and Web image classification and searching. In the biomedical domain, content-based image retrieval can be used in patient digital libraries, clinical diagnosis, searching of 2-D electrophoresis gels, and pathology slides. In this thesis, we present a wavelet-based approach for feature extraction, combined with integrated region matching. An image in the database, or a portion of an image, is represented by a set of regions, roughly corresponding to objects, which are characterized by color, texture, shape, and location. A measure for the overall similarity between images is developed as a region-matching scheme that integrates properties of all the regions in the images. The advantage of using such a “soft matching” is that it makes the metric robust to poor segmentation, an important property that previous work has not solved. An experimental image retrieval system, SIMPLIcity (Semantics-sensitive Integrated Matching for Picture LIbraries), has been built to validate these methods on various image databases, including a database of about 200,000 general-purpose images and a database of more than 70,000 pathology image fragments. We have shown that our methods perform much better and much faster than existing methods. The system is exceptionally robust to image alterations such as intensity variation, sharpness variation, intentional distortions, cropping, shifting, and rotation. These features are important to biomedical image databases because visual features in the query image are not exactly the same as the visual features in the images in the database. The work has also been applied to the classification of on-line images and web sites.
机译:在许多应用领域,例如生物医学,军事,商业,教育以及Web图像分类和搜索,对基于内容的有效图像检索的需求已大大增加。在生物医学领域,基于内容的图像检索可用于患者数字图书馆,临床诊断,2-D电泳凝胶的搜索以及病理切片。在本文中,我们提出了一种基于小波的特征提取方法,并结合了集成区域匹配。数据库中的图像或图像的一部分由一组区域表示,这些区域大致对应于对象,这些对象由颜色,纹理,形状和位置来表征。图像之间的整体相似性的度量被开发为一种区域匹配方案,该方案整合了图像中所有区域的属性。使用这种“软匹配”的优势在于,它使度量标准能够可靠地应对不良细分,而这是先前工作尚未解决的重要属性。已经建立了实验图像检索系统SIMPLIcity(图片库的语义敏感集成匹配),以在各种图像数据库上验证这些方法,包括大约200,000幅通用图像的数据库和70,000多个病理图像片段的数据库。我们已经表明,我们的方法比现有方法执行得更好,更快。该系统对于图像更改(例如强度变化,清晰度变化,故意失真,裁切,移动和旋转)异常强大。这些特征对生物医学图像数据库很重要,因为查询图像中的视觉特征与数据库中图像中的视觉特征并不完全相同。该工作也已应用于在线图像和网站的分类。

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