Train your own tessdata
This is by far the most important lesson learned from my experience with tesseract. Out of the box tesseract works really well with recognizing scanned book and newspaper text, but when you try using it with a font that is not similar to standard book and newspaper fonts (like Times New Roman) in my experience accuracy decreases significantly. Training used to be much more difficult, but nowadays tesstrain.sh makes it a cinch. You will have to gather up your video game fonts (or ones that look similar to them at least) and provide them as input to the training script. Even if your fonts are widely different, tesseract will be able to choose the right font for the provided image at runtime with amazing accuracy. Also, I know it's tedious, but it would be beneficial to provide the wordlist of all words encountered in the video games to the training script. Training tesseract with your own fonts and your own wordlist will give you near-perfect accuracy without doing much of anything else.
Preprocess image to recognize
Dont rely on tesseract's layout analysis
If you can, do your own layout analysis and crop the image to the parts containing the text. Teseract has a page segmentation engine built-in but it has to cover such a broad range of use cases that it most likely will not work for your particular needs. Also, in my experience it further helps with accuracy if you separate the image out into single lines of text and use the segmentation mode 7 (Treat the image as a single text line).
Bump up x-height of input text
It helps if you increase the x-height of the input text to the same height you used to train tesseract (IIRC this was 70 pixels in my case).
Bump up DPI of input text
Tesseract really likes 300 DPI. Note that changing the DPI of an image is not the same as changing its size. (for example, with ImageMagick you would use the -density option to change an image's DPI).
Tesseract configuration variables to use
In my experience, tweaking the different "penalty" settings having to do with matching dictionary words had the most impact on improving accuracy. The settings that worked for me:
language_model_penalty_non_dict_word 0.975
language_model_penalty_non_freq_dict_word 0.575
segment_penalty_dict_case_bad 1.3125
segment_penalty_dict_case_ok 1.1
segment_penalty_dict_nonword 10.25
But you should obviously do your own tweaking. Also, I found that the x-height settings were very useful at runtime: textord_min_xheight
and min_sane_x_ht_pixels
.
I am not aware of any memory size limits on tesseract. Are you perhaps using tesseract through a wrapper that has its own limits?
Note: this answer is assuming you're using the latest stable build of tesseract, which would be tesseract 3.05. If you're using tesseract 4.0, doing your own training and segmentation would still apply but the other sections of the answer may be OBE.