Separation of Transparent Layers using Focus

作者:Yoav Y. Schechner, Nahum Kiryati, Ronen Basri

摘要

Consider situations where the depth at each point in the scene is multi-valued, due to the presence of a virtual image semi-reflected by a transparent surface. The semi-reflected image is linearly superimposed on the image of an object that is behind the transparent surface. A novel approach is proposed for the separation of the superimposed layers. Focusing on either of the layers yields initial separation, but crosstalk remains. The separation is enhanced by mutual blurring of the perturbing components in the images. However, this blurring requires the estimation of the defocus blur kernels. We thus propose a method for self calibration of the blur kernels, given the raw images. The kernels are sought to minimize the mutual information of the recovered layers. Autofocusing and depth estimation in the presence of semi-reflections are also considered. Experimental results are presented.

论文关键词:semireflections, depth from focus, blind deconvolution, blur estimation, enhancement, image reconstruction and recovery, inverse problems, optical sectioning, signal separation, decorrelation

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论文官网地址:https://doi.org/10.1023/A:1008166017466