Are there any good NLP or statistical techniques for detecting garbled characters in OCR-ed text? Off the top of my head I was thinking that looking at the distribution of n-grams in text might be a good starting point but I'm pretty new to the whole NLP domain.
Here is what I've looked at so far:
- N-gram Statistics in English and Chinese: Similarities and Differences
- Statistical Distributions of English Text
The text will mostly be in english but a general solution would be nice. The text is currently indexed in Lucene so any ideas on a term based approach would be useful too.
Any suggestions would be great! Thanks!