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A Hybrid Markov Random Field/Marked Point Process Model for Analysis of Materials Images

机译:材料图像分析的混合马尔可夫随机场/标记点过程模型

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摘要

Both Markov random field (MRF) and marked point process (MPP) models have some limitations for image analysis. While the MRF is useful for imposing local constraints, global constraints are not easily modeled. On the contrary, it is convenient to model global constraints, such as geometric shape and object interactions, within the MPP framework, but such an object-based MPP model has limited capability for imposing local constraints such as pixel-wise interactions. In this paper, we propose a combined model that incorporates both local and global constraints within a single energy function. Optimization using our model is performed using simulation schemes, including reversible jump Markov chain Monte Carlo and multiple birth and death algorithms. We also present results using iterated conditional modes for optimization. Although our model should be useful for any application that requires both global information and precise boundary localization, we consider the analysis of microscope images of materials in this paper. We present experimental results to compare our model to the MPP model for object detection and the MRF model for segmentation.
机译:马尔可夫随机场(MRF)模型和标记点过程(MPP)模型都对图像分析有一些限制。虽然MRF对于施加局部约束非常有用,但全局约束却很难建模。相反,在MPP框架内对诸如几何形状和对象交互之类的全局约束进行建模很方便,但是这样的基于对象的MPP模型在施加局部约束(如逐像素交互)方面的能力有限。在本文中,我们提出了一个组合模型,该模型在单个能量函数中结合了局部约束和全局约束。使用我们的模型进行的优化是通过模拟方案执行的,包括可逆跳跃马尔可夫链蒙特卡洛和多种生死算法。我们还介绍了使用迭代条件模式进行优化的结果。尽管我们的模型对于需要全局信息和精确边界定位的任何应用程序都应该有用,但我们还是在本文中考虑对材料的显微镜图像进行分析。我们提供实验结果,以将我们的模型与用于对象检测的MPP模型和用于分割的MRF模型进行比较。

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