I realize this is not exactly what is asked here, but the title of the question may lead others, like me, to come here seeking for a way to (non-destructively) increase contrast in an image *even after it's normalized* — similar to what one can do with the curves feature in Photoshop by setting it to a sigmoid shape:

A simple way to do this (assuming we have an image normalized in the `[0,1]`

range, for instance by passing it to MATLAB's `mat2gray`

function) is to use the cosine function. Here's how: we first reflect the cosine curve so that its lowest point is on zero, and the highest on π, rather than the reverse; then we scale the input by π so the highest point occurs when the input has its maximum value, 1; and finally we normalize the result to the output range `[0,1]`

(from cosine's original `[-1,1]`

) by adding 1 and dividing by 2. The result is the simple formula below:

```
img_contrast = ( -cos( pi * mat2gray( img_original ) ) + 1 ) / 2;
```

Hope that helps!

`[0.0,1.0]`

. So no matter how you transform the intensities (linearly or non-linearly), you should then consider mapping the result to the`[0,1]`

range. – Amro Aug 2 '11 at 11:51