The accepted answer by @Ratbert makes the incorrect claims that
The correct answer is the first one
graythresh uses the min and max values in the image as boundaries,
which is the most logical behavior.
and rayryeng appears to agree with it. David Parks appears to have empirically verified it.
The correct answer is given by Anand which strangely seems to have a negative vote. He explains very convincingly that
full range of grayscale pixel values' depends on the data type of the input image
As he explains,
this is the third option
except for the fact that the
dark image could not possibly get a threshold of 0.75.
First let us clarify the difference between the claims for the simplest case, in clear MATLAB, so there is no confusion. For an image with values ranging from
max, the question poses three possibilities which, when translated to an equation are:
threshold = min + (max-min) * graythresh
threshold = max * graythresh
threshold = 255 * graythresh
Suppose the image consists of just two points one with an intensity of 0, and the other with 100. This means
dark = uint8([0 100]);. A second image
light = dark+155;. When we compute
255*graythresh(dark) we get exactly
49.5. When we compute
255*graythresh(light) we get exactly
204.5. These answers make it patently obvious that the third option is the only possibility.
There is one further fine point. If you try
255*graythresh(uint8(1:2)) the answer is
1, and not
1.5. So it appears that if you are using
greythresh to threshold an image, you should use
image <= 255*graythesh(image) with a less-than-or-equal-to, rather than a plain less-than.