自组织树图中的动态特征融合应用于生物膜图像分割

M. Kyan, L. Guan, S. Liss
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引用次数: 5

摘要

研究了自组织树图(SOTM)神经网络作为共聚焦显微镜图像数据中微生物分割的一种方法。描述像素和区域强度、相位一致性和空间接近性的特征对细菌和其他微生物的分割的影响进行了探讨。研究了个体特征的重要性,并提出,在微生物图像分割的背景下,如果某些特征在学习的初始阶段占主导地位,可以实现更好的目标描绘。通过这种方式,随着学习的进展,随着网络获得更多关于被分割数据的知识,其他特征被允许变得更重要/不重要。SOTM在适应和保持输入空间拓扑结构方面的效率和灵活性使其成为实现该思想的合适候选。提出了初步的实验,发现在学习的早期阶段有利于强度特征,而在学习的后期阶段放松邻近约束,提供了一个通用的机制,通过它我们可以改善微生物成分的分割
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Dynamic feature fusion in the self organising tree map-applied to the segmentation of biofilm images
The self organising tree map (SOTM) neural network is investigated as a means of segmenting microorganisms from confocal microscope image data. Features describing pixel & regional intensities, phase congruency and spatial proximity are explored in terms of their impact on the segmentation of bacteria and other micro-organisms. The significance of individual features is investigated, and it is proposed that, within the context of micro-biological image segmentation, better object delineation can be achieved if certain features dominate the initial stages of learning. In this way, other features are allowed to become more/less significant as learning progresses: as the network gains more knowledge about the data being segmented. The efficiency and flexibility of the SOTM in adapting to, and preserving the topology of input space, makes it an appropriate candidate for implementing this idea. Preliminary experiments are presented and it is found that favouring intensity characteristics in the early phases of learning, whilst relaxing proximity constraints in later phases of learning, offers a general mechanism through which we can improve the segmentation of microbial constituents
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