Some months ago I preformed in-depth analysis for one of my partner companies, host of high-end Web-based OCR platform - OCR-IT. I can share a lot of information regarding this service. Receipts, mobile camera pictures of various signs, various portable scans, trucking forms, etc are majority of their processing volume. There are some mechanisms in place to deal whit those image defects. OCR produced by OCR-IT platform is font-independent, so any modern printed font should work well. It depends on how intrusive the crease or wrinkle is. If the image defect obscures the character substantially, and back-end tools like image cleanup, dictionary look-ups, trigrams, or statistical analysis can't predict what the character it, then OCR result will be affected. If the image has just a shadow or a small wrinkle, then OCR can usually pull through it with successful result, especially if the word is common and is in a dictionary. Easy way to analyze intensity and effect of a wrinkle is to look at a barbarized image - wrinkle will either disappear or will become noticeable and obtrusive.
Other high-end (i.e. paid) OCR engines mentioned, will be similar to OCR results available from OCR-IT, so my answer can be generalized. However, each technology has its own strengths and lacking parts in very specific situations. They should be tested on the same image and only then can be compared side-by-side.
Analysis of a picture containing text with frequent creases and defects, photographed in one of most unpredictable environments - signs on marathon runners passing in front of a camera - can be found in OCR-IT blog here: http://www.ocr-it.com/user-scenario-process-digital-camera-pictures-and-ocr-to-extract-specific-numbers Look at other Blog articles, as there are a couple more related posts.
Feel free to contact me privately if you need any specific information or further guidance from my area of expertise.