Хулоса. Қўлёзма матни тасвирларига ишлов бериш ва уларни таҳлил
қилиш тизимининг муҳим ва ажралмас қисми бўлиб уларга дастлабки ишлов
бериш ҳисобланади. Таклиф қилинган алгоритмлар тўплами қўлёзма матни
тасвирларига дастлабки ишлов бериш масалаларини ҳал қилишга имкон берди.
Таклиф қилинган алгоритмлар натижаларининг визуал баҳосига асосланган ҳолда
бу алгоритмларни қўлёзма матни тасвирларини таҳлил қилиш асосида шахсни
идентификация қилиш, қўлёзма матни тасвирларини таниб олиш тизимлари ва
қўлёзма матни тасвирларини таҳлил қилишга асосланган бошқа тизимларни
ишлаб чиқишда қўллаш мумкинлиги тўғрисида хулоса қилиш мумкин.
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Наманган давлат университети 11.04.2019й
Муҳаммад ал-Хоразмий номидаги қабул қилинган
Тошкент ахборот технологиялари
университети Фарғона филиали
80
УЎК 519.81
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