Қўлёзма матни тасвирларини қайта ишлаш ва таҳлил қилиш тизимларини ишлаб
чиқишнинг муҳим босқичи бўлиб берилган тасвирларга дастлабки ишлов бериш ҳисобланади,
чунки ушбу босқич натижаси бутун тизимнинг иш сифатига таъсир қилади. Мақола босқич
масалаларини ҳал қилишга бағишланади ва ушбу иш доирасида ушбу масалаларни ҳал қилувчи
мавжуд усуллар ва алгоритмларни аналитик шарҳлаш ўтказилган, уларни ҳал қилиш алгоритмлари
таклиф қилинади.
Қўлёзма матни тасвирларини қайта ишлаш ва таҳлил қилиш тизимларини ишлаб
чиқишнинг муҳим босқичи бўлиб берилган тасвирларга дастлабки ишлов бериш ҳисобланади,
чунки ушбу босқич натижаси бутун тизимнинг иш сифатига таъсир қилади. Мақола босқич
масалаларини ҳал қилишга бағишланади ва ушбу иш доирасида ушбу масалаларни ҳал қилувчи
мавжуд усуллар ва алгоритмларни аналитик шарҳлаш ўтказилган, уларни ҳал қилиш алгоритмлари
таклиф қилинади.
Важным этапом разработки систем обработки и анализа изображений рукописного текста
является предварительная обработка исходных изображений, так как результаты данного этапа
значительно влияют на качество работы системы в целом. Статья посвящена решению задач
указанного этапа и в рамках данной работы проведен аналитический обзор существующих
методов и алгоритмов, решающих эти задачи, предложены алгоритмы их решения.
An important stage in the development of systems for processing and analyzing of images of
handwritten texts is the preprocessing of the original images, since the results of this stage significantly
affect the quality of the system as a whole. The article is devoted to solving the problems of this stage and
in the framework of this work an analytical review of existing methods and algorithms that solve these
problems was carried out, the algorithms for their solution were proposed.
№ | Author name | position | Name of organisation |
---|---|---|---|
1 | Asraev M.A. | _ | _ |
2 | Dadakhanov M.K. | _ | _ |
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