Agricultural plant hyperspectral imaging dataset

Автор: Gaidel Andrey Viktorovich, Podlipnov Vladimir Vladimirovich, Ivliev Nikolay Aleksandrovich, Paringer Rustam Alexandrovich, Ishkin Pavel Aleksandrovich, Mashkov Sergey Vladimirovich, Skidanov Roman Vasilyevich

Журнал: Компьютерная оптика @computer-optics

Рубрика: Обработка изображений, распознавание образов

Статья в выпуске: 3 т.47, 2023 года.

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Detailed automated analysis of crop images is critical to the development of smart agriculture and can significantly improve the quantity and quality of agricultural products. A hyperspectral camera potentially allows to extract more information about the observed object than a conventional one, so its use can help in solving problems that are difficult to solve with conventional methods. Often, predictive models that solve such problems require a large dataset for training. However, sufficiently large datasets of hyperspectral images of agricultural plants are not currently publicly available. Therefore, we present a new dataset of hyperspectral images of plants in this paper. This dataset can be accessed via URL https://pypi.org/project/HSI-Dataset-API/. It contains 385 hyperspectral images with a spatial resolution of 512 by 512 pixels and spectral resolution of 237 spectral bands. The images were captured in the summer of 2021 in Samara and Novocherkassk (Russia) using Offner based Imaging Hyperspectrometer of our own production. The article demonstrates the work of some basic approaches to the analysis of hyperspectral images using the dataset and states problems for further solving.

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Hyperspectral imaging, image dataset, image processing, image segmentation, smart agriculture

Короткий адрес: https://sciup.org/140300064

IDR: 140300064   |   DOI: 10.18287/2412-6179-CO-1226

Список литературы Agricultural plant hyperspectral imaging dataset

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