Here's some general high-level advice for how to get started.
Basically, what you are doing is an optimization problem. These algorithms are used for a lot of problems, and there are several well-known ways to do this. They boil down to this
- Create a scoring function that can tell you a single number of how good a result you have. The bigger the number the better.
- Create a function that takes the input and some parameters and produces an output that can be scored
- This is important: The scoring function should be somewhat continuous based on the parameters to #2. If you had two parameters, and plotted it in 3D (param1, param2, score), it would look like a bumpy surface with big hills.
- Your job now is to find the maximum in the surface. You may have more than two parameters -- in that case, you have an N-D surface -- but the idea is the same
Look up Hill-climbing, genetic algorithms, or optimization problems. A good python book with code is "Programming Collective Intelligence" by Toby Segaran.
Generally hill-climbing is something like:
- Make a good guess of the parameters
- Create the output and score
- Change one parameter slightly
- Score the output
- If it's better keep going in this direction, if it's worse, change direction.
- If you are stuck -- go somewhere else in the surface and try there.
- If you find a local maximum, but it's not good enough -- go somewhere else and try there
Look up the actual algorithms though, they are somewhat more complex than this.
A lot of the research boils down to coming up with a good scoring function and a good way to know what parameters will work and how to use them.
Using this general outline -- just try brightness/contrast as your output generating function (brightness and contrast are inputs). For scoring, you will need a way of comparing two photos for a match -- to start, pick something simple (perhaps hard-code an area to check).
Once you get it going, you will have more insights into how to do this, and can go back to the papers for ideas.