Облачные системы интеллектуального видеонаблюдения. Логические модели и модель сбора данных

Бутырский Е. Ю., Водяхо А. И., Жукова Н. А., Субботин А. Н.

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  Облачные системы интеллектуального видеонаблюдения. Логические модели и модель сбора данных(688,24 KB)

Аннотация

В статье рассмотрены логическая и математическая модели обработки изображений в облаке. Представлен обзор и анализ готовых решений, реализуемых в облачных средах, проанализированы недостатки существующих систем. Сформулирована задача повышения эффективности систем обработки изображений. Определены основные показатели и критерии эффективности для новых систем. Рассмотрены возможные пути решения поставленной задачи.

The article discusses the logical model and the data model for image processing in the cloud. Provides an overview and analysis of ready-made solutions implemented in the cloud environment, and analyzesthe shortcomings of existing systems. The task of improving the efficiency of image processing systems is fomulated. The main indicators and performance criteria for the new systems are considered. Possible solutions for the defined task are suggested.

Ключевые слова:

обработка изображений – image processing; виртуализация – virtualization; распределенные вычисления – distributed computing; машинное обучение – machine learning; модель данных – data model; логическая модель – logical model; облачные среды – cloud environments.

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