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Narrow Gap Detection in Microscope Images Using Marked Point Process Modeling

机译:使用标记点过程建模的显微镜图像中的窄缝检测

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Differentiating objects separated by narrow gaps is a challenging and important task in analyzing microscopic images. These small separations provide useful information for applications that require detailed boundary information and/or an accurate particle count. We present a new approach to the modeling of these gaps based on a marked point process (MPP) framework. We propose to model narrow gaps as geometric structures called channels and define Gibbs energies for these models. The reversible jump Markov chain Monte Carlo (RJMCMC) algorithm embedded with simulated annealing is used as an optimization method, and the switching kernel in an RJMCMC is newly designed to speed up the algorithm. In this paper, we also propose a method to exploit a detected channel configuration to reduce bridging channel defects in conventional segmentation algorithms. The experimental results demonstrate that the proposed channel modeling methods are successful in detecting gaps between closely adjacent objects. The results also show that the proposed interaction parameter control method improves boundary precision in the segmentation of microscopic images. The implementation of this method is available at https://engineering.purdue.edu/MASSI.
机译:在显微镜图像的分析中,区分由窄间隙分隔的物体是一项艰巨而重要的任务。这些小间距可为需要详细边界信息和/或精确颗粒计数的应用提供有用的信息。我们提出了一种基于标记点过程(MPP)框架的这些差距建模的新方法。我们建议将狭窄的间隙建模为称为通道的几何结构,并为这些模型定义吉布斯能量。嵌入模拟退火的可逆跳跃马尔可夫链蒙特卡罗(RJMCMC)算法被用作一种优化方法,并且重新设计了RJMCMC中的交换内核以加速该算法。在本文中,我们还提出了一种利用检测到的通道配置来减少传统分段算法中桥接通道缺陷的方法。实验结果表明,所提出的通道建模方法可以成功地检测出相邻物体之间的间隙。结果还表明,所提出的交互参数控制方法提高了显微图像分割中的边界精度。可在https://engineering.purdue.edu/MASSI上获得此方法的实现。

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