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Practical Poissonian-Gaussian Noise Modeling and Fitting for Single-Image Raw-Data

机译:实用的单图像原始数据泊松-高斯噪声建模和拟合

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摘要

We present a simple and usable noise model for the raw-data of digital imaging sensors. This signal-dependent noise model, which gives the pointwise standard-deviation of the noise as a function of the expectation of the pixel raw-data output, is composed of a Poissonian part, modeling the photon sensing, and Gaussian part, for the remaining stationary disturbances in the output data. We further explicitly take into account the clipping of the data (over- and under-exposure), faithfully reproducing the nonlinear response of the sensor. We propose an algorithm for the fully automatic estimation of the model parameters given a single noisy image. Experiments with synthetic images and with real raw-data from various sensors prove the practical applicability of the method and the accuracy of the proposed model.
机译:我们为数字成像传感器的原始数据提供了一个简单且可用的噪声模型。此依赖信号的噪声模型根据像素原始数据输出的期望值给出噪声的逐点标准差,该模型由泊松部分(对光子感应建模)和高斯部分(其余部分组成)组成输出数据中的静态干扰。我们进一步明确地考虑了数据的裁剪(过度曝光和曝光不足),忠实地再现了传感器的非线性响应。我们提出了一种给定单个噪声图像的模型参数的全自动估计算法。用合成图像和来自各种传感器的真实原始数据进行的实验证明了该方法的实际适用性和所提出模型的准确性。

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