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Cognitive hierarchical active partitions in distributed analysis of medical images

机译:医学图像分布式分析中的认知层次活动分区

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摘要

Semantic oriented image analysis has always been considered a challenging task, as it does not concentrate on segmentation process itself, but on interpretation of various image fragments. Contextuality of the process has recently gained significant research interest, with knowledge from image domain being repeatedly highlighted as crucial in achieving satisfactory method effectiveness. The present article elaborates on the recently described contextual hierarchical active partitions (CHAP) technique and its distributed reformulation. CHAP framework lets domain knowledge to be injected to the automated medical study analysis in a seamless and transparent manner by enabling a human expert to interactively participate in the process, e.g. by solving subtasks currently too difficult to solve by automated agents. Separation of agents makes it easy to design complex analysis algorithms from well tested and predictable components making it easy to inject human expertise at any point as needed.
机译:面向语义的图像分析一直被认为是一项具有挑战性的任务,因为它不专注于分割过程本身,而是专注于各种图像片段的解释。最近,该过程的上下文关系引起了广泛的研究兴趣,来自图像领域的知识被反复强调为实现令人满意的方法有效性的关键。本文详细介绍了最近描述的上下文层次活动分区(CHAP)技术及其分布式重构。 CHAP框架通过使人类专家能够交互式地参与该过程,从而以无缝,透明的方式将领域知识注入到自动化医学研究分析中。通过解决当前由自动化代理程序难以解决的子任务。代理程序的分离使您可以轻松地从经过良好测试和可预测的组件设计复杂的分析算法,从而轻松地根据需要在任何时候注入人类的专业知识。

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