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An MRF model-based approach to simultaneous recovery of depth and restoration from defocused images

机译:基于MRF模型的方法可同时恢复深度和从散焦图像中恢复

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In this paper, we propose a MAP-Markov random field (MRF) based scheme for recovering the depth and the focused image of a scene from two defocused images. The space-variant blur parameter and the focused image of the scene are both modeled as MRFs and their MAP estimates are obtained using simulated annealing. The scheme is amenable to the incorporation of smoothness constraints on the spatial variations of the blur parameter as well as the scene intensity. It also allows for inclusion of line fields to preserve discontinuities. The performance of the proposed scheme is tested on synthetic as well as real data and the estimates of the depth are found to be better than that of the existing window-based depth from defocus technique. The quality of the space-variant restored image of the scene is quite good even under severe space-varying blurring conditions.
机译:在本文中,我们提出了一种基于MAP-Markov随机场(MRF)的方案,用于从两个散焦图像中恢复场景的深度和聚焦图像。空变模糊参数和场景的聚焦图像均被建模为MRF,并使用模拟退火获得其MAP估计。该方案适合在模糊参数的空间变化以及场景强度上引入平滑性约束。它还允许包含行字段以保留不连续性。在合成数据和真实数据上测试了所提出方案的性能,发现深度估计要优于散焦技术中现有的基于窗口的深度估计。即使在严重的时空变化模糊条件下,场景的空间变化复原图像的质量也非常好。

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