I would use a combination of color manipulation and local thresholding.
As a first step, look at the value (HSV) plane, extract it, because black on col is easily extracted with that. I did a bit of a lookup (a sort of logarithmic greyscale multiplication), to make the contrast between background and text even higher. I used a local thresholding method called Niblack to extract the text, and finally, some morphology to remove tiny artefacts.
Masked the whole thing and smoothed a bit (low pass).
edit: I have been asked to add references to Niblack. It is usually referenced in a 1986 textbook written by him, but for better accessibility, I will point you to a paper that also describes the algorithm and gives some food for thought on how to proceed with this:
These improved algorithms are problem-specific, the original Niblack is still my goto-start when I want localized thresholds.