对卫星图像进行处理和利用,以提取精准农业中的有用信息。

M. Herbei, C. Popescu, R. Bertici, A. Smuleac, G. Popescu
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引用次数: 12

摘要

近年来,由于提供城市地区土地覆盖和植被信息的速度和准确性不断提高,图像分析方法得到了极大的发展和多样化。本文的目的是对卫星图像进行处理,用于农业地区的监测。本研究使用的卫星图像是QuickBird和SPOT系统拍摄的中高分辨率图像。基于这些图像,对一个非常大的区域进行监督分类,得到土地利用类别。监督分类可以定义为对组成卫星图像的像素进行数字分组的能力,根据它们的实际意义。使用最大相似度(maximum likelihood)的高斯算法,专业文献称其为最大似然法或概率分类,基于概率论(高斯函数),将手中每个像素的光谱值与每个感兴趣区域的统计“指纹”进行比较。实际上,计算属于某一类或另一类的条件概率。该组中间的点有较高的概率属于某一类,概率区间(同心等值线或等概率等高线)由表示每组训练中的光谱变化的izocontours以图形方式划分。
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Processing and use of satellite images in order to extract useful information in precision agriculture.
Image analysis methods were developed and diversified greatly in recent years due to increasing speed and accuracy in providing information regarding land cover and vegetation in urban areas. The aim of this paper is to process satellite images for monitoring agricultural areas. Satellite images used in this study are medium and high resolution images taken from QuickBird and SPOT systems. Based on these images, a supervised classification was performed of a very large area, having as result the land use classes. Supervised classification can be defined as the ability to group the pixels that compose the satellite image, digitally, in accordance with their real significance. Gaussian algorithm of maximum similarity (Maximum likelihood) was used, referred to in the specialty literature as maximum likelihood method or probabilistic classification, and based on the use of probability theory (function Gaussian) to compare the spectral values of each pixel in hand with statistical " fingerprint "of each area of interest. Practically, conditional probabilities were calculated of belonging to one class or another. The points in the middle of the group have a higher probability of belonging to the certain class, probability intervals (concentric isolines or contours of equal probability) being delimited graphically by izocontours expressing spectral variations within each set of training.
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