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An artificial ant colonies approach to medical image segmentation.

机译:人工蚁群方法用于医学图像分割。

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摘要

The success of image analysis depends heavily upon accurate image segmentation algorithms. This paper presents a novel segmentation algorithm based on artificial ant colonies (AC). Recent studies show that the self-organization of ants is similar to neurons in the human brain in many respects. Therefore, it has been used successfully for understanding biological systems. It is also widely used in many applications in robotics, computer graphics, etc. Considering the features of artificial ant colonies, we present an extended model for image segmentation. In our model, each ant can memorize a reference object, which will be refreshed when it finds a new target. A fuzzy connectedness measure is adopted to evaluate the similarity between target and the reference object. The behavior of an ant is affected by the neighbors and the cooperation between ants is performed by exchanging information through pheromone updating. Experimental results show that the new algorithm can preserve the detail of the object and is also insensitive to noise.
机译:图像分析的成功很大程度上取决于准确的图像分割算法。本文提出了一种新的基于人工蚁群的分割算法。最近的研究表明,蚂蚁的自组织在许多方面类似于人脑中的神经元。因此,它已成功用于理解生物系统。它也广泛用于机器人技术,计算机图形学等许多应用中。考虑到人工蚁群的特征,我们提出了一种图像分割的扩展模型。在我们的模型中,每个蚂蚁都可以记住一个参考对象,当它找到一个新的目标时就会刷新。采用模糊连通性度量评价目标与参考对象之间的相似性。蚂蚁的行为受到邻居的影响,并且蚂蚁之间的合作是通过信息素更新交换信息来执行的。实验结果表明,新算法可以保留物体的细节,并且对噪声不敏感。

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