基于卫星影像分析的植被变化检测

N. Nimbarte, Prathamesh Sayam, S. Balamwar
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引用次数: 0

摘要

图像分析被认为是研究各种学科以及应用农业的有效方法。它的重要性在于,它将在许多国家的经济中发挥关键作用。遥感作为地球植被探测研究的一个关键功能已经到来。植物寿命估计对每个人都至关重要,所有农民和农业组织都努力对植物生命进行有利可图的分类,因为遥感图像被用作农业应用的输入。利用遥感图像确定植物生长地点至关重要,并通过当局和非公共机构制定财政计划。这些绘画的技术是选择卫星电视拍摄,探测植物生命,并使用合适的分类方法。虽然测量可以快速、同步地获取广大地区的地表特征,但它确实是信息提取的关键来源。它使用ERDAS软件从同一地区不同时间拍摄的图像中识别变化。这项工作包括监督类别策略,如最小距离类别和最概率类别。这项工作提供了一个精确的例子,说明这些分类策略如何通过使用照片处理来挑选植物生命。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Change Detection of Vegetation by Satellite Image Analysis
Image analysis has been said to be an efficient approach for research in a broad variety of subjects as well as application agriculture. Its importance will be that it serves as a crucial venture across many countries economies. The age of remote sensing has arrived as a critical function in research of the earth for the detection of vegetation. Plant life estimation is vital for everyone and all farmers and agricultural organizations strive to classify plant life profitably because faroff sensing images are used as input for agricultural applications. Identifying vegetative places using remotely sensed images is critical and monetary making plans via means of authorities and non-public agencies. The technique for these paintings is the choice of satellite TV for photographs, the detection of plant life, and the usage of a suitable category method. Although it can capture the land surface features in a vast territory quickly and simultaneously, surveying is indeed the key source for information extraction. It identifies the changes from images taken at different times in the same area using ERDAS software. This work consists of supervised category strategies like the minimal distance category and most probability category. This work affords a precise example of how those category strategies may be used to pick out plant life through the usage of photograph processing.
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