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A novel algorithm for multifocus image fusion based on contourlet Hidden Markov Tree model

机译:基于Contourlet隐马尔可夫树模型的多焦点图像融合新算法

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According to features of multifocus images and statistical characteristics of contourlet coefficients, a novel algorithm for multifocus image fusion based on contourlet Hidden Markov Tree model (con-HMT) is proposed. Multifocus images are used all together to train the contourlet HMT model. Then a new fusion rule for the high frequency is built. In this rule, the probability of a detailed coefficient corresponding to image edge, calculated directly from the HMT model, is chosen as the salience measure. Experimental results show that, for multifocus image fusion, the proposed algorithm provides more satisfying fusion results in terms of visual effect and objective evaluations, which proves its feasibility and validity.
机译:根据多孔图像的特征和Contourlet系数的统计特征,提出了一种基于Contourlet隐藏马尔可夫树模型(CON-HMT)的多聚焦图像融合的新算法。多焦点图像全部用于培训Contourlet HMT模型。然后构建了高频的新融合规则。在该规则中,选择与图像边缘相对应的详细系数的概率直接从HMT模型计算,作为显着测量。实验结果表明,对于多焦点图像融合,所提出的算法在视觉效果和客观评估方面提供了更满意的融合,证明了其可行性和有效性。

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