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Processing, analysis, recognition, and automatic understanding of medical images

机译:处理,分析,识别和对医学图像的自动理解

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Paper presents some new ideas introducing automatic understanding of the medical images semantic content. The idea under consideration can be found as next step on the way starting from capturing of the images in digital form as two-dimensional data structures, next going throw images processing as a tool for enhancement of the images visibility and readability, applying images analysis algorithms for extracting selected features of the images (or parts of images e.g. objects), and ending on the algorithms devoted to images classification and recognition. In the paper we try to explain, why all procedures mentioned above can not give us full satisfaction in many important medical problems, when we do need understand image semantic sense, not only describe the image in terms of selected features and/or classes. The general idea of automatic images understanding is presented as well as some remarks about the successful applications of such ides for increasing potential possibilities and performance of computer vision systems dedicated to advanced medical images analysis. This is achieved by means of applying linguistic description of the picture merit content. After this we try use new AI methods to undertake tasks of the automatic understanding of images semantics in intelligent medical information systems. A successful obtaining of the crucial semantic content of the medical image may contribute considerably to the creation of new intelligent multimedia cognitive medical systems. Thanks to the new idea of cognitive resonance between stream of the data extracted form the image using linguistic methods and expectations taken from the representation of the medical knowledge, it is possible to understand the merit content of the image even if the form of the image is very different from any known pattern.
机译:论文提出了一些新的想法,介绍了对医学图像语义含量的自动理解。在从数字形式以数字形式捕获作为二维数据结构的方式开始的方式,可以找到所考虑的想法,然后将图像处理作为增强图像可见性和可读性,应用图像分析算法用于提取图像的选择(或图像的一部分),并结束专用于图像分类和识别的算法。在本文中,我们尝试解释,为什么以上所有程序都不能在许多重要的医学问题中充分满足,当我们确实需要了解图像语义意义时,不仅根据所选功能和/或类来描述图像。提出了自动图像理解的一般思路,以及关于诸如潜在可能性和专用于高级医学图像分析的计算机视觉系统的潜在可能性和性能的成功应用的一些评论。这是通过应用图片优异内容的语言描述来实现的。在此之后,我们尝试使用新的AI方法来进行智能医疗系统中图像语义的自动理解的任务。成功获得医学图像的关键语义含量可能会促进创建新的智能多媒体认知医疗系统的贡献。由于使用语言方法和从医学知识的表示中取出的数据流的数据流之间的数据的新思想,即使图像的形式是,也可以理解图像的优点内容与任何已知的图案非常不同。

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