Determination of the optimum sampling frequency of noisy images by spatial statistics
Author(s) -
Luis Miguel SanchezBrea,
Eusebio Bernabéu
Publication year - 2005
Publication title -
applied optics
Language(s) - English
Resource type - Journals
ISSN - 0003-6935
DOI - 10.1364/ao.44.003276
Subject(s) - kriging , interpolation (computer graphics) , sampling (signal processing) , estimator , kernel (algebra) , image resolution , noise (video) , nyquist–shannon sampling theorem , convolution (computer science) , metrology , nyquist frequency , computer science , mathematics , statistics , image (mathematics) , artificial intelligence , computer vision , filter (signal processing) , combinatorics , artificial neural network
In optical metrology the final experimental result is normally an image acquired with a CCD camera. Owing to the sampling at the image, an interpolation is usually required. For determining the error in the measured parameters with that image, knowledge of the uncertainty at the interpolation is essential. We analyze how kriging, an estimator used in spatial statistics, can generate convolution kernels for filtering noise in regularly sampled images. The convolution kernel obtained with kriging explicitly depends on the spatial correlation and also on metrological conditions, such as the random fluctuations of the measured quantity, and the resolution of the measuring devices. Kriging, in addition, allows us to determine the uncertainty of the interpolation, and we have analyzed it in terms of the sampling frequency and the random fluctuations of the image, comparing it with Nyquist criterion. By use of kriging, it is possible to determine the optimum-required sampling frequency for a noisy image so that the uncertainty at interpolation is below a threshold value.
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