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The non-parametric sub-pixel local point spread function estimation is a well posed problem

机译:非参数子像素局部点扩展函数估计是一个恰当的问题

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摘要

Most medium to high quality digital cameras (dslrs) acquire images at a spatial rate which is several times below the ideal Nyquist rate. For this reason only aliased versions of the cameral point-spread function (psf) can be directly observed. Yet, it can be recovered, at a sub-pixel resolution, by a numerical method. Since the acquisition system is only locally stationary, this psf estimation must be local. This paper presents a theoretical study proving that the sub-pixel psf estimation problem is well-posed even with a single well chosen observation. Indeed, theoretical bounds show that a near-optimal accuracy can be achieved with a calibration pattern mimicking a Bernoulli(0.5) random noise. The physical realization of this psf estimation method is demonstrated in many comparative experiments. We use an algorithm to accurately estimate the pattern position and its illumination conditions. Once this accurate registration is obtained, the local psf can be directly computed by inverting a well conditioned linear system. The psf estimates reach stringent accuracy levels with a relative error of the order of 2% to 5%. To the best of our knowledge, such a regularization-free and model-free sub-pixel psf estimation scheme is the first of its kind.
机译:大多数中高品质的数码相机(dslrs)以比理想奈奎斯特速率低几倍的空间速率获取图像。因此,只能直接观察到照相机点扩展函数(psf)的别名版本。但是,它可以通过数值方法以亚像素分辨率恢复。由于采集系统仅在本地固定,因此该psf估计值必须是本地的。本文提供了一项理论研究,证明了即使只有一个精心选择的观察结果,子像素psf估计问题也能很好地解决。确实,理论上的界限表明,使用模仿伯努利(0.5)随机噪声的校准图案可以实现接近最佳的精度。在许多比较实验中证明了该psf估计方法的物理实现。我们使用一种算法来准确估计图案位置及其照明条件。一旦获得了准确的配准,就可以通过反转条件良好的线性系统直接计算局部psf。 psf估计达到严格的准确度水平,相对误差为2%至5%。据我们所知,这种无规则且无模型的子像素psf估计方案尚属首次。

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