f_i (x) = f( k_i q (
x
)
+n_q_i ) +n_f_i
where includes sensor noise,
and
includes image noise due to
quantization, compression, transmission.
(For precise definitions of these two noise sources, see [7].)
In the presence of noise,
each picture provides an estimate of the actual quantity of light
falling on the image sensor:
q_i (x) = 1k_i
f^-1(f_i(
x))
where is an estimate of the actual exposure constant
,
and
is an estimate of the true camera response function
,
assuming
[7].
Multiple estimates of the actual quantity of light falling on the image sensor may be combined as follows: q(x) = _i c_i q_i(x) _i c_i
Photographic film is traditionally characterized by the so-called
``Density versus log Exposure'' characteristic
curvewyckoff[9].
Similarly, in the case of electronic imaging,
we may also use logarithmic exposure units, ,
so that one image will be
units darker than the other:
(f^-1(f_1(x))) =Q =(
f^-1(
f_2(
x
)
)
) - K
The existence of an inverse for
follows from
a semimonotonicity assumption.
Semimonotonicity follows from the fact that we expect pixel
values to either increase or stay the same with increasing quantity of
illumination,
1.
Since the logarithm function is also monotonic,
the problem comes down to estimating the semimonotonic function
and the scalar constant
.
The unknowns ( and
)
may be solved in a least squares
sense2.