I'm working on a program that does OCR on a US business card and tries to return information like first name, last name, etc. The challenge is how to do that.
So far I've built the following data files:
first_names.txt (Contains 23k+ first names) last_names.txt (Contains 86k+ last names) job_title.txt (Contains 500+ job titles) us_cities.txt (Contains 10k+ us cities) states_full.txt (Contains full names of all US states) states_abv.txt (Contains all US state abbreviations)
The goal was for me to tokenize the OCR data by spaces and try to award "weight" to each string based on the likeliness of it being a certain type of data.
For example, a string earlier in the text blob is more likely to be the name, company, or title. Likewise, if a string is found in first_names.txt or last_names.txt, then it will have more weight towards first/last name.
This approach sounds ok in theory, but I'm wondering about the best way to approach it from a programming perspective. (PHP, not that language matters) The tricky part is that some token's weight are relative to other tokens. For example:
- If a token seems likely to be a first name, then it is likely that the next token is a last name.
- Some tokens are related to each other, but if things are exploded by spaces, I'm not sure how to relate them. Example, "Anne Marie, FL" would be considered three tokens - "Anne", "Marie", and "FL". Worse yet, "Anne" and "Marie" would gain weight towards being a first name. Now, if weight is also awarded based on position, a previous string with first name weight could win, freeing these strings up to be detected as city.
I know there's a lot of smart people out there, so maybe someone has an idea on this one!