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Infrared Image Segmentation using Hidden Markov Random Fields and Expectation-maximization Algorithm

机译:隐马尔可夫随机场和期望最大化算法的红外图像分割

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Circuit board infrared image segmentation is an important procedure in the application of circuit board fault detection with infrared thermal imaging technology. A CNO-HMRF-EM algorithm combined with the advantage of HMRF, EM and CNO is designed to deal with the insufficiency of the traditional clustering methods in the circuit board infrared image segmentation . To get the best clustering segmentation results, HMRF-EM algorithm is used as the first step to estimate the tag of each image point so that each point of image can be clustered according to the tag estimation result. Then the HMRF-EM algorithm?s optimal clustering number is determined in the use of CNO algorithm. The simulation results prove that, comparing with the methods of C-Mean clustering and OTSU clustering, bigger GS value as well as the better results of the clustering segmentation can be acquired in the use of CNO-HMRF-EM algorithm.
机译:电路板红外图像分割是应用红外热成像技术进行电路板故障检测的重要过程。设计了一种结合了HMRF,EM和CNO优势的CNO-HMRF-EM算法,以解决传统聚类方法在电路板红外图像分割中的不足。为了获得最佳的聚类分割结果,首先采用HMRF-EM算法来估计每个图像点的标签,以便可以根据标签估计结果对图像的每个点进行聚类。然后利用CNO算法确定HMRF-EM算法的最优聚类数。仿真结果表明,与C-Mean聚类和OTSU聚类方法相比,使用CNO-HMRF-EM算法可以获得较大的GS值以及较好的聚类分割结果。

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