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Cellular image segmentation using n-agent cooperative game theory

机译:使用N-Agent合作博弈论的蜂窝图​​像分割

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Image segmentation is an important problem in computer vision and has significant applications in the segmentation of cellular images. Many different imaging techniques exist and produce a variety of image properties which pose difficulties to image segmentation routines. Bright-field images are particularly challenging because of the non-uniform shape of the cells, the low contrast between cells and background, and imaging artifacts such as halos and broken edges. Classical segmentation techniques often produce poor results on these challenging images. Previous attempts at bright-field imaging are often limited in scope to the images that they segment. In this paper, we introduce a new algorithm for automatically segmenting cellular images. The algorithm incorporates two game theoretic models which allow each pixel to act as an independent agent with the goal of selecting their best labelling strategy. In the non-cooperative model, the pixels choose strategies greedily based only on local information. In the cooperative model, the pixels can form coalitions, which select labelling strategies that benefit the entire group. Combining these two models produces a method which allows the pixels to balance both local and global information when selecting their label. With the addition of k-means and active contour techniques for initialization and post-processing purposes, we achieve a robust segmentation routine. The algorithm is applied to several cell image datasets including bright-field images, fluorescent images and simulated images. Experiments show that the algorithm produces good segmentation results across the variety of datasets which differ in cell density, cell shape, contrast, and noise levels.
机译:图像分割是计算机视觉中的一个重要问题,并且在蜂窝图像的分割中具有重要应用。存在许多不同的成像技术并产生各种图像属性,其对图像分割例程构成困难。由于电池的不均匀形状,电池和背景之间的低对比度,以及诸如晕圈和破碎边缘的成像伪像之间的低对比度,亮场图像特别具有挑战性。经典分割技术经常在这些具有挑战性的图像上产生差的结果。以前的亮野成像尝试通常限制在它们段的图像范围内。在本文中,我们介绍了一种用于自动分割蜂窝图像的新算法。该算法包含两个游戏理论模型,允许每个像素充当独立代理,其中目标是选择最佳标签策略。在非合作模型中,仅基于本地信息,像素选择策略。在合作模型中,像素可以形成联盟,选择合理整个组的标签策略。组合这两个模型产生一种方法,该方法允许像素在选择其标签时平衡本地和全局信息。随着用于初始化和后处理目的的K-Means和主动轮廓技术,我们实现了强大的分割程序。该算法应用于包括亮场图像,荧光图像和模拟图像的多个单元图像数据集。实验表明,该算法在各种数据集中产生良好的分段结果,其在细胞密度,细胞形状,对比度和噪声水平方面不同。

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