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Low-level vision edge detector by using Bayesian decision and maximum a posteriori probability estimation theory

机译:基于贝叶斯决策和最大后验概率估计理论的低视力边缘检测器

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Abstract: This paper present an automated approach for al ow-level vision edge detector. The approach we have taken is to formulate the problem in terms of Bayesian inferencing. This provides meaningful performance functionals. The focus of this work is on the use of Markov Random Fields for specifying the a prior probability for an object or a scene. Local moles for regions and edges in the image are generated and by suing local map estimation approach, we find the edge configuration and the region intensity for each site in the image. The local results for regions and edges are combined by using Markov Random Field. The clique coefficient of the Markov Random Field which describes our model is estimated by using the 'coding method' presented Besag; a practical method to estimate the Gibbs distribution parameters is to use the histogram method presented by Derin and Elliot. Our approach is unsupervised and the solution to the problems of interest is presented along with experimental result. In addition there is comparative in the result of the Canny edge detector. !17
机译:摘要:本文提出了一种自动方法,用于全水平视觉边缘检测器。我们采用的方法是根据贝叶斯推理来表达问题。这提供了有意义的性能功能。这项工作的重点是使用马尔可夫随机场来指定物体或场景的先验概率。生成图像中区域和边缘的局部痣,并通过使用局部地图估计方法,我们找到图像中每个位置的边缘配置和区域强度。使用马尔可夫随机场将区域和边缘的局部结果组合在一起。描述我们模型的马尔可夫随机场的集团系数是使用Besag提出的“编码方法”估算的;估计吉布斯分布参数的一种实用方法是使用Derin和Elliot提出的直方图方法。我们的方法不受监督,并提出了感兴趣的问题的解决方案以及实验结果。此外,Canny边缘检测器的结果具有可比性。 !17

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