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Image Understanding Applications of Lattice Autoassociative Memories

机译:图像理解格子自缔合记忆的应用

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Multivariate mathematical morphology (MMM) aims to extend the mathematical morphology from gray scale images to images whose pixels are high-dimensional vectors, such as remote sensing hyperspectral images and functional magnetic resonance images (fMRIs). Defining an ordering over the multidimensional image data space is a fundamental issue MMM, to ensure that ensuing morphological operators and filters are mathematically consistent. Recent approaches use the outputs of two-class classifiers to build such reduced orderings. This paper presents the applications of MMM built on reduced supervised orderings based on lattice autoassociative memories (LAAMs) recall error measured by the Chebyshev distance. Foreground supervised orderings use one set of training data from a foreground class, whereas background/foreground supervised orderings use two training data sets, one for each relevant class. The first case study refers to the realization of the thematic segmentation of the hyperspectral images using spatial-spectral information. Spectral classification is enhanced by a spatial processing consisting in the spatial correction guided by a watershed segmentation computed by the LAAM-based morphological operators. The approach improves the state-of-the-art hyperspectral spatial-spectral thematic map building approaches. The second case study is the analysis of resting state fMRI data, working on a data set of healthy controls, schizophrenia patients with and without auditory hallucinations. We perform two experiments: 1) the localization of differences in brain functional networks on population-dependent templates and 2) the classification of subjects into each possible pair of cases. In this data set, we find that the LAAM-based morphological features improve over the conventional correlation-based graph measure features often employed in fMRI data classification.
机译:多元数学形态学(MMM)旨在将数学形态学从灰度图像扩展到像素是高维向量的图像,例如遥感高光谱图像和功能性磁共振图像(fMRI)。定义多维图像数据空间上的顺序是MMM的基本问题,以确保随后的形态学运算符和过滤器在数学上是一致的。最近的方法使用两类分类器的输出来构建这种简化的排序。本文介绍了基于基于Chebyshev距离测得的晶格自缔合记忆(LAAM)召回误差的基于简化监督排序的MMM的应用。前景监督排序使用来自前景类的一组训练数据,而背景/前景监督排序使用两个训练数据集,每个相关类一个。第一个案例研究涉及使用空间光谱信息实现高光谱图像的主题分割。光谱分类通过空间处理得到增强,该空间处理包括由基于LAAM的形态算子计算出的分水岭分割指导的空间校正。该方法改进了最新的高光谱空间光谱专题图构建方法。第二个案例研究是对静止状态功能磁共振成像数据的分析,研究了健康对照,有或没有听觉幻觉的精神分裂症患者的数据集。我们进行了两个实验:1)在依赖人群的模板上对大脑功能网络的差异进行定位,以及2)将受试者分类为每对可能的病例。在此数据集中,我们发现基于LAAM的形态特征比通常在fMRI数据分类中使用的基于传统相关性的图度量特征有所改善。

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