Analog Document Search Using CRNN and Keyphrase Extraction
Автор: Lokeshwar S., Vadiraja Rao M. K., Sujay Kumar P. S., Vishveshwara Guthal Gowda, Hemavathi P.
Журнал: International Journal of Image, Graphics and Signal Processing @ijigsp
Статья в выпуске: 2 vol.13, 2021 года.
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There seems to be a peculiar trend in the way information is now used, moving to digital media not just for the newspapers but for books as well. With advances in Optical Character Recognition (OCR), Style Transfer Mapping (STM), and efficient key phrasing, we are now able to digitalize the document to a form that can be read across multiple platforms and searched efficiently. It provides users with the ease of searching for relevant documents without the tedious process of manual searching. We propose a system that uses the CRNN model to detect English characters in the document with high accuracy. We then pair it with a hybrid keyphrasing technique, which uses Positional Rank as its Graph based rank and re-rank the key phrases using the C-Value method. This process allows us to automatically digitize the printed document and summarise it to provide high-quality keyphrases, which can be used to efficiently search and retrieve relevant printed documents.
Analog document search, CRNN, Keyphrase Extraction, Position Rank
Короткий адрес: https://sciup.org/15017388
IDR: 15017388 | DOI: 10.5815/ijigsp.2021.02.02
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