Разработка цифровой ГИС-основы для региона Центрального Казахстана на основе картографических материалов и данных дистанционного зондирования
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DOI:
https://doi.org/10.32523/2616-6771-2025-152-3-122-141Ключевые слова:
ГИС-основа, цифровая карта, картографические материалы, данные дистанционного зондирования, Центральный КазахстанАннотация
Статья посвящена созданию цифровой геоинформационной основы Центрального Казахстана на базе интеграции различных источников пространственных данных. Целью исследования является разработка структурированной ГИС-основы, способной обеспечить эффективную поддержку анализа, мониторинга и пространственного моделирования в регионе с высоким природно-ресурсным потенциалом. В работе рассмотрены этапы сбора и систематизации картографических материалов и данных дистанционного зондирования Земли, геопривязки и векторизации объектов, верификации и пространственного анализа данных. Применялись методы сбора и структуризации картографических материалов, векторизации топографических карт, анализа цифровой модели рельефа, топологии и т.д. Результатом исследования стала обновлённая цифровая ГИС-основа региона, которая может быть использована для пространственного планирования, экологического мониторинга, управления инфраструктурой, а также в образовательных и научных целях.
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Copyright (c) 2025 Sh. Kairova, N. Zhengissova, Zh. Toktarov, K. Zulpykharov, D. Tokkozhayev, A. Assanbayeva, O. Taukebayev (Author)

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