Commercial data has been preserved digitally in portable document format (PDF) for its ease of encapsulating multiple data formats. In this digitization era, there comes a need to capture and store this data in structured format to facilitate its access for automated b2b services and business intelligence. In this paper, we propose a framework that automates discovery and extraction of tabular data incorporating both artificial and human intelligence. The framework involves clustering and heuristics to group cartesian location of text and spaces in a page to determine a table. The discovered table is then validated by the user using a user-interface designed to moderate the determined boundaries and fed back to the layout knowledge repository. The table data obtained is extracted as JSON key-value pairs which can then be loaded into any database. The framework thus provides enhanced accuracy and continuous human assisted learning for the automated document digitization process. The knowledge repository is further used to train the machine to generate document templates to be used for processing unseen documents. However, this paper concentrates on the discovery of structured data alone.
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