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Performance analysis of maximum likelihood estimator for recovery of depth from defocused images and optimal selection of camera parameters

机译:最大似然估计器的性能分析,可从散焦图像中恢复深度并优化相机参数

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The recovery of depth from defocused images involves calculating the depth of various points in a scene by modeling the effect that the focal parameters of the camera have on images acquired with a small depth of field. In the existing methods on depth from defocus (DFD), two defocused images of a scene are obtained by capturing the scene with different sets of camera parameters. Although the DFD technique is computationally simple, the accuracy is somewhat limited compared to the stereo algorithms. Further, an arbitrary selection of the camera settings can result in observed images whose relative blurring is insufficient to yield a good estimate of the depth. In this paper, we address the DFD problem as a maximum likelihood (ML) based blur identification problem. We carry out performance analysis of the ML estimator and study the effect of the degree of relative blurring on the accuracy of the estimate of the depth. We propose a criterion for optimal selection of camera parameters to obtain an improved estimate of the depth. The optimality criterion is based on the Cramer-Rao bound of the variance of the error in the estimate of blur. A number of simulations as well as experimental results on real images are presented to substantiate our claims. [References: 34]
机译:从散焦图像中恢复深度涉及通过对相机的聚焦参数对以小景深获取的图像进行建模的效果来计算场景中各个点的深度。在现有的离焦深度(DFD)方法中,通过使用不同组的相机参数捕获场景来获取场景的两个散焦图像。尽管DFD技术在计算上很简单,但与立体声算法相比,精度有所限制。此外,相机设置的任意选择可以导致观察到的图像的相对模糊不足以产生深度的良好估计。在本文中,我们将DFD问题解决为基于最大似然(ML)的模糊识别问题。我们进行了ML估计器的性能分析,并研究了相对模糊度对深度估计精度的影响。我们提出了最佳选择相机参数的标准,以获得对深度的改进估计。最佳标准基于模糊估计中误差方差的Cramer-Rao边界。提出了许多模拟和真实图像上的实验结果,以证实我们的主张。 [参考:34]

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