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A Multi-agent System Approach for Medical Image Segmentation

机译:医学图像分割的多代理系统方法

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Image segmentation still requires improvements although there have been research works since the last few decades. This is coming due to some issues. Firstly, most image segmentation solutions are problem-based. Secondly, medical image segmentation methods generally have restrictions because medical images have very similar gray level and texture among the interested objects. The goal of this work is to design a framework to extract simultaneously several objects of interest from Computed Tomography (CT) images by using some priori-knowledge. Our method used properties of agent in a multi-agent environment. The input image is divided into several sub-images, and each agent works on a sub-image and tries to mark each pixel as a specific region by means of given priori-knowledge. During this time the local agent marks each cell of sub-image individually. Moderator agent checks the outcome of all agentspsila work to produce final segmented image. The experimental results for cranial CT images demonstrated segmentation accuracy around 90%.
机译:虽然自过去几十年以来一直有研究作品,图像分割仍然需要改进。这是由于一些问题。首先,大多数图像分割解决方案都是基于问题的。其次,医学图像分割方法通常具有限制,因为医学图像具有非常相似的灰度和纹理在感兴趣的对象中。这项工作的目标是通过使用一些先验知识来设计一个框架来提取来自计算断层扫描(CT)图像的多个感兴趣的对象。我们的方法在多代理环境中使用了代理的属性。输入图像被划分为几个子图像,并且每个代理在子图像上工作,并尝试通过给定先验知识来标记每个像素作为特定区域。在此期间,本地代理单独标记子图像的每个单元。主持人代理检查所有代理普及普拉的结果,以产生最终分段图像。颅骨CT图像的实验结果表明分段精度约为90%。

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