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2016 | OriginalPaper | Chapter

Soybean Extraction of Brazil Typical Regions Based on Landsat8 Images

Authors : Kejian Shen, Xue Han, Haijun Wang, Weijie Jiao

Published in: Computer and Computing Technologies in Agriculture IX

Publisher: Springer International Publishing

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Abstract

Considering the spatial distribution and harvest times of Brazil soybean, using Landsat8 data, this paper chose 3 study area, determine the optimum classification images by visually comparison of multi-period images, extract soybean by ISODATA unsupervised classification method and visual correction. The conclusion is that Landsat8 path/row of 225/75 (between Study area3 and Study area2) are soybean transition area of harvest 1 time in a year and harvest 2 times in a year; Classification result can be used for sampling survey of national scale and the full coverage survey of county scale. Soybean classification method can be used to improve the method of low resolution image and to guide other medium resolution image.

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Metadata
Title
Soybean Extraction of Brazil Typical Regions Based on Landsat8 Images
Authors
Kejian Shen
Xue Han
Haijun Wang
Weijie Jiao
Copyright Year
2016
DOI
https://doi.org/10.1007/978-3-319-48354-2_4

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