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Content―based image analysis: Object extraction by datamining on hierarchically decomposed medical images

机译:基于内容的图像分析:通过对分层分解的医学图像进行数据挖掘来提取对象

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Reliable automated analysis and examination of biomedical images requires reproducible and robust extraction of contained image objects. However, the necessary description of image content as visually relevant objects is context-dependent and determined by parameters such as resolution, orientation, and, of course, the clinical-diagnostic question. Therefore a computer-based approach has to model both examination context and image acquisition as expert knowledge. Generally, static solutions are not satisfying because a change of application will most likely require a redesign of the analysis process. In contrast to non-satisfying statical solution, this paper describes a flexible approach, which allows medical examiners the context-sensitive extraction of sought objects from almost arbitrary medical images, without requiring technical knowledge on image analysis and processing. Since this methodology is applicable to any analysis task on large image sets, it works for general image series analysis as well as image retrieval. The new approach combines classical image analysis with the idea of data mining to close the gap between low abstraction on the technical level and high-level expert knowledge on image content and understanding.
机译:可靠的生物医学图像自动化分析和检查需要可再现且强大的提取所包含图像对象。但是,作为视觉相关对象的图像内容的必要描述取决于上下文,并且由诸如分辨率,方向以及当然还有临床诊断问题之类的参数确定。因此,基于计算机的方法必须将检查环境和图像获取建模为专家知识。通常,静态解决方案不能令人满意,因为更改应用程序很可能需要重新设计分析过程。与不令人满意的静态解决方案相比,本文描述了一种灵活的方法,该方法允许医学检查人员从几乎任意的医学图像中上下文敏感地提取寻找的对象,而无需图像分析和处理方面的技术知识。由于此方法适用于大型图像集上的任何分析任务,因此适用于常规图像系列分析以及图像检索。新方法将经典的图像分析与数据挖掘的思想相结合,以缩小技术层面上的低抽象与图像内容和理解方面的高级专家知识之间的差距。

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