Том 14, № 4Страницы 5 - 23

Evolution of the Viola - Jones Object Detection Method: a Survey

V.V. Arlazarov, Ju.S. Voysyat, D.P. Matalov, D.P. Nikolaev, S.A. Usilin
Метод Виолы и Джонса является одним из самых известных методов локализации объектов на цифровых изображениях. За минувшие 20 лет со дня первой публикации, метод был существенно изучен, исследователями и инженерами было предложено множество модификаций оригинального алгоритма и отдельных его частей. Отдельные популяризованные Полом Виолой и Майклом Джонсом идеи встали в основу множества других алгоритмов локализации объектов на изображениях. В этой работе представлено описание метода Виолы и Джонса, история его развития и модификаций в контексте различных задач локализации объектов на изображениях, а также описание современного состояния дел - какое место метод занимает сейчас в эпоху обширного применения сверточных нейронных сетей.
Полный текст
Ключевые слова
метод Виолы и Джонса, распознавание образов, машинное обучение, классификация объектов, локализация объектов, детектирование объектов.
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