Publication | Closed Access
Practical Poissonian-Gaussian Noise Modeling and Fitting for Single-Image Raw-Data
842
Citations
15
References
2008
Year
EngineeringImage SensorUsable Noise ModelNonlinear ResponseImage AnalysisPattern RecognitionNoiseComputational ImagingComputational PhotographyStatisticsMachine VisionSingle-image Raw-dataSignal-dependent Noise ModelNoisy DataInverse ProblemsMedical Image ComputingSignal ProcessingComputer VisionVideo DenoisingImage DenoisingImage Restoration
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.
| Year | Citations | |
|---|---|---|
Page 1
Page 1