Multiple resolution image segmentation using four QP supports of 2D autoregressive model

O. Alata, P. Baylou, M. Najim
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引用次数: 1

Abstract

In the framework of a model based approach and using Bayesian estimation techniques, one can improve the results of image segmentation algorithms. In such cases, the texture field is modeled by a 2D autoregressive model. In previous works, segmentation algorithm derivation was based on the prediction error calculated from the first quadrant quarter plane support [Bouman and Liu, 1992]. In this paper, we introduce information extracted from the estimation of the four linear prediction errors calculated from the four quarter plane supports in order to solve boundary problems and to propose isotropic local criteria. Simulation results using the multiple resolution segmentation algorithm [Bouman and Liu] with single quarter plane and four quarter plane criteria are provided.
基于四种QP支持的二维自回归模型的多分辨率图像分割
在基于模型的方法框架下,使用贝叶斯估计技术,可以改善图像分割算法的结果。在这种情况下,纹理场由二维自回归模型建模。在以往的工作中,分割算法推导是基于第一象限四分之一平面支持计算的预测误差[Bouman and Liu, 1992]。本文引入从四个四分之一平面支承计算的四种线性预测误差估计中提取的信息,以解决边界问题并提出各向同性局部准则。给出了采用单四分之一平面和四个四分之一平面准则的多分辨率分割算法[Bouman and Liu]的仿真结果。
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