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用于无监督纹理分割的分层多重马尔可夫链模型

Hierarchical multiple Markov chain model for unsupervised texture segmentation.

作者信息

Scarpa Giuseppe, Gaetano Raffaele, Haindl Michal, Zerubia Josiane

机构信息

University "Federico II", DIBET, 80125, Naples, Italy.

出版信息

IEEE Trans Image Process. 2009 Aug;18(8):1830-43. doi: 10.1109/TIP.2009.2020534. Epub 2009 May 12.

Abstract

In this paper, we present a novel multiscale texture model and a related algorithm for the unsupervised segmentation of color images. Elementary textures are characterized by their spatial interactions with neighboring regions along selected directions. Such interactions are modeled, in turn, by means of a set of Markov chains, one for each direction, whose parameters are collected in a feature vector that synthetically describes the texture. Based on the feature vectors, the texture are then recursively merged, giving rise to larger and more complex textures, which appear at different scales of observation: accordingly, the model is named Hierarchical Multiple Markov Chain (H-MMC). The Texture Fragmentation and Reconstruction (TFR) algorithm, addresses the unsupervised segmentation problem based on the H-MMC model. The "fragmentation" step allows one to find the elementary textures of the model, while the "reconstruction" step defines the hierarchical image segmentation based on a probabilistic measure (texture score) which takes into account both region scale and inter-region interactions. The performance of the proposed method was assessed through the Prague segmentation benchmark, based on mosaics of real natural textures, and also tested on real-world natural and remote sensing images.

摘要

在本文中,我们提出了一种新颖的多尺度纹理模型以及一种用于彩色图像无监督分割的相关算法。基本纹理通过其沿选定方向与相邻区域的空间相互作用来表征。反过来,这种相互作用通过一组马尔可夫链进行建模,每个方向一个,其参数收集在一个综合描述纹理的特征向量中。基于这些特征向量,纹理随后被递归合并,产生出更大、更复杂的纹理,这些纹理出现在不同的观察尺度上:因此,该模型被命名为分层多重马尔可夫链(H-MMC)。纹理分割与重建(TFR)算法基于H-MMC模型解决无监督分割问题。“分割”步骤允许找到模型的基本纹理,而“重建”步骤基于一种概率度量(纹理得分)定义分层图像分割,该概率度量同时考虑了区域尺度和区域间相互作用。所提出方法的性能通过基于真实自然纹理镶嵌图的布拉格分割基准进行评估,并在真实世界的自然图像和遥感图像上进行了测试。

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