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Automatic image segmentation of greenness in crop fields

机译:作物田间绿色自动图像分割

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摘要

This paper describes a new automatic image segmentation strategy for segmenting green plants. The final goal is its application in Precision Agriculture. The goal is to identify several classes of greenness coming from the plants. We exploit the performance of several existing approaches so that conveniently combined allow us to design the automatic approach based on non automatic methods. First we apply a well known index-based strategy that accentuates the green spectral band from the remainder, giving a gray image. From the resulting image we apply the well-known thresholding Otsu's method obtaining a binary image, where the green part appears separated from the soil. Taking as input the green pixels we apply an unsupervised method and they are partitioned in a fixed number of classes. The performance of the method is tested against a set of available images and acquired in several crop fields of cereal and maize.
机译:本文介绍了一种用于分割绿色植物的新的自动图像分割策略。最终目标是将其应用于精准农业。目的是确定来自植物的几类绿色。我们利用几种现有方法的性能,以便方便地组合使用,从而使我们能够基于非自动方法来设计自动方法。首先,我们应用一种众所周知的基于索引的策略,该策略会突出其余部分的绿色光谱带,从而给出灰色图像。从结果图像中,我们应用众所周知的阈值Otsu方法获得二值图像,其中绿色部分似乎与土壤分开。以绿色像素为输入,我们应用了无监督方法,并且将它们划分为固定数量的类。该方法的性能针对一组可用的图像进行了测试,并在谷物和玉米的几个作物田中获得。

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