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* [https://blog.bisok.com/webinars Webinars and Video] | * [https://blog.bisok.com/webinars Webinars and Video] | ||
* [https://www.bisok.com/white-papers/ BIS White Papers] | * [https://www.bisok.com/white-papers/ BIS White Papers] | ||
* [https://www.bisok.com/case-studies/ Case Studies] | * [https://www.bisok.com/case-studies/ Case Studies] | ||
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* [[ACE Training Schedule]] | * [[ACE Training Schedule]] | ||
* [https://go.bisok.com/first-tuesday-grooper-technical-user-group First Tuesday User Group Signup] | |||
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Revision as of 11:30, 10 March 2021
Getting Started | |||
Grooper was built from the ground up by BIS, a company with 35 years of continuous experience developing and delivering new technology. Grooper is an intelligent document processing and digital data integration solution that empowers organizations to extract meaningful information from paper/electronic documents and other forms of unstructured data. The platform combines patented and sophisticated image processing, capture technology, machine learning, natural language processing, and optical character recognition to enrich and embed human comprehension into data. By tackling tough challenges that other systems cannot resolve, Grooper has become the foundation for many industry-first solutions in healthcare, financial services, oil and gas, education, and government. |
Getting Started | ||
Install and Setup | |||
2.90 Reference Documentation |
Featured Articles | Did you know? |
Header-Value is one of three methods available to Data Table elements to extract information from tables on a document set. It uses a combination of column header and column value extractors to determine the table’s structure and extract information from the table’s cells. It uses a fairly simply concept as it's basis. You, a human reader, often know how to read a table because of the labels at the top of each column. You know a column labeled "Date" is going to dates in each row for that column. The "Header" part of Header-Value is establishing column header labels as the first step in modeling the table's structure. Furthermore, if you see a column labeled "Date", you expect to see date values in the cells below. You wouldn't expect to find a Social Security Number, for example. That just wouldn't make sense for how the column is labeled. This is the "Value" part of the Header-Value method. Once you establish where the table begins, using the header labels, you can more fully model the table's structure using information about the values in each column. |
The earliest examples of OCR (Optical Character Recognition) can be traced back to the 1870s. Early OCR devices were actually invented to aid the blind. This included "text-to-speech" devices that would scan black print and produce sounds a blind person could interpret, as well as "text-to-tactile" machines which would convert luminous sensations into tactile sensations. Machines such as these would allow a blind person to read printed text not yet converted to Braille. The first business to install an OCR reader was the magazine Reader's Digest in 1954. The company used it to convert typewritten sales reports into machine readable punch cards. It would not be until 1974 that OCR starts to form as we imagine it now with Ray Kurzweil's development of the first "omni-font" OCR software, capable of reading text of virtually any font. |
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