Нечеткие алгоритмы в некоторых задачах распознавания и управления
Диссертация
Проблема распознавания является сложной многоуровневой проблемой. Она включает в себя задачи распознавания всех видов информации. Решение любой конкретной задачи распознавания требует, в общем случае, построения специальной системы распознавания. Применение компьютеров для разработки, оформления и хранения больших объемов информации делает актуальной задачу уменьшения стоимости и времени ввода… Читать ещё >
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