ВЫЧИСЛИТЕЛЬНЫЕ СИСТЕМЫ И СЕТИ
ИНТЕЛЛЕКТУАЛЬНЫЕ СИСТЕМЫ И ТЕХНОЛОГИИ
В. В. Арлазаров "Анализ использования проблемно-ориентированных пакетов данных в научных исследованиях"
МАТЕМАТИЧЕСКОЕ МОДЕЛИРОВАНИЕ
В. В. Арлазаров "Анализ использования проблемно-ориентированных пакетов данных в научных исследованиях"
Аннотация. 

В работе рассматривается проблемы создания и использования открытых проблемно-ориентированных пакетов данных для проведения экспериментальных исследований с проверяемыми и воспроизводимыми результатами, на примере опыта создания пакетов семейства MIDV, содержащих изображения и видеопоследовательности идентификационных документов. Проведен анализ опубликованных научных работ в областях компьютерного зрения, обработки изображений и вычислительной лингвистики, использующих эти пакеты данных, описаны основные проблемы, с которыми сталкивались научные группы, и выявлены общие закономерности и принципы, которые могут быть использованы для создания пакетов данных такого класса и для расширения существующих.

Ключевые слова: распознавание текста, анализ документов, пакеты данных, воспроизводимость исследований, OCR, обработка изображений.

Стр. 10-23.

DOI 10.14357/20718632220302
 
 
Литература

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