By the laws of quantum physics, pixel intensity does not have a true value, but should be a random variable. Contrary
to the conventional assumptions, the distribution of intensity may not be an additive Gaussian. We propose to directly model
the intensity difference, and show its validity by an experimental comparison to the conventional additive model. As a model of
the intensity difference, we present a Skellam distribution derived from the Poisson photon noise model. This modeling induces
a linear relationship between intensity and Skellam parameters, while conventional variance computation methods do not yield
any significant relationship between these parameters under natural illumination. The intensity-Skellam line is invariant to scene,
illumination and even most of camera parameters. We also propose practical methods to obtain the line using a color pattern
and an arbitrary image under a natural illumination. Because the Skellam parameters that can be obtained from this linearity
determine a noise distribution for each intensity value, we can statistically determine whether any intensity difference is caused by
an underlying signal difference or by noise. We demonstrate the effectiveness of this new noise model by applying it to practical
applications of background subtraction and edge detection.