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A new procedure for the modelling and representation of classes in multivariate images

机译:多元图像中类的建模和表示的新过程

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This paper describes a new procedure for the estimation of classes in multivariate images. The Feedback Multivariate Model Selection (FEMOS) procedure combines unsupervised and supervised classifiers with a model evaluation criterion to extract classes from the multivariate image in an iterative manner. The procedure uses a subset of the multivariate image to estimate a general model and evaluates this model with the original multivariate image via a model evaluation criterion. The procedure can be applied for the unsupervised segmentation of multivariate images or for training and test set estimation from multivariate images. Furthermore, a new coloring scheme, called class coloring, is presented for coloring of class labels in segmented images. The coloring of class labels is automated, which makes it independent of the number of classes and shows more resemblance with the pseudocolor multivariate image. The procedure is tested on different real world multivariate images and the results are compared with cluster size-insensitive FCM (csi-FCM), a clustering algorithm. The results show that the procedure outperforms traditional routines in terms of robustness and accuracy when applied as either unsupervised segmentation technique or class modelling technique.
机译:本文介绍了一种用于估计多元图像中类别的新过程。反馈多元模型选择(FEMOS)过程将无监督和监督分类器与模型评估标准结合在一起,以迭代方式从多元图像中提取类别。该过程使用多元图像的子集来估计通用模型,并通过模型评估标准用原始多元图像评估该模型。该过程可以用于多元图像的无监督分割,也可以应用于多元图像的训练和测试集估计。此外,提出了一种新的着色方案,称为分类着色,用于对分割图像中的分类标签进行着色。类标签的着色是自动的,这使其与类的数量无关,并且与伪彩色多元图像更相似。该程序在不同的现实世界多元图像上进行了测试,并将结果与​​群集大小不敏感的FCM(csi-FCM)(一种群集算法)进行了比较。结果表明,该方法在作为无监督分割技术或类建模技术应用时,在鲁棒性和准确性方面均优于传统例​​程。

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