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首页> 外文期刊>EURASIP journal on advances in signal processing >An Adaptively Accelerated Bayesian Deblurring Method with Entropy Prior
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An Adaptively Accelerated Bayesian Deblurring Method with Entropy Prior

机译:熵先验的自适应加速贝叶斯去模糊方法

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The development of an efficient adaptively accelerated iterative deblurring algorithm based on Bayesian statistical concept has been reported. Entropy of an image has been used as a "prior" distribution and instead of additive form, used in conventional acceleration methods an exponent form of relaxation constant has been used for acceleration. Thus the proposed method is called hereafter as adaptively accelerated maximum a posteriori with entropy prior (AAMAPE). Based on empirical observations in different experiments, the exponent is computed adaptively using first-order derivatives of the deblurred image from previous two iterations. This exponent improves speed of the AAMAPE method in early stages and ensures stability at later stages of iteration. In AAMAPE method, we also consider the constraint of the nonnegativity and flux conservation. The paper discusses the fundamental idea of the Bayesian image deblurring with the use of entropy as prior, and the analytical analysis of superresolution and the noise amplification characteristics of the proposed method. The experimental results show that the proposed AAMAPE method gives lower RMSE and higher SNR in 44% lesser iterations as compared to nonaccelerated maximum a posteriori with entropy prior (MAPE) method. Moreover, AAMAPE followed by wavelet wiener filtering gives better result than the state-of-the-art methods.
机译:已经报道了基于贝叶斯统计概念的高效自适应加速迭代去模糊算法的开发。图像的熵已被用作“先验”分布,并且在传统的加速方法中使用了替代形式,而不是累加形式,将松弛常数的指数形式用于加速。因此,以下将所提出的方法称为具有熵先验的自适应加速的最大后验(AAMAPE)。基于不同实验中的经验观察,使用来自前两次迭代的去模糊图像的一阶导数自适应地计算指数。该指数提高了AAMAPE方法在早期阶段的速度,并确保了迭代后期的稳定性。在AAMAPE方法中,我们还考虑了非负性和通量守恒的约束。本文以先验熵为基础,讨论了贝叶斯图像去模糊的基本思想,并对该方法的超分辨率和噪声放大特性进行了分析。实验结果表明,与非加速最大后验熵先验(MAPE)方法相比,所提出的AAMAPE方法具有更低的RMSE和更高的SNR,且迭代次数减少了44%。此外,与最新技术方法相比,AAMAPE继之以小波维纳滤波可以提供更好的结果。

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