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Comparison of Supervised Classifiers and Image Features for Crop Rows Segmentation on Aerial Images

机译:航空图像中作物行分割的监督分类器和图像特征比较

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摘要

In this paper we present a comparison of supervised classifiers and image features for crop row segmentation of aerial images captured from an unmanned aerial vehicle (UAV). The main goal is to investigate which methods are the most suitable to solve this specific problem, as well as to test quantitatively how well they perform for robust segmentation of row patterns. For this purpose, we conducted a systematic literature review over the recent methods specifically designed for aerial image crop row segmentation, and for comparison purposes we implemented the most prominent approaches. Most used Color-texture features were faced against most used classifiers, resulting into a total of 48 combinations, usually having their construction concepts based on the following two step-procedures: (i) supervised training step to build some model over the selected color-texture feature space which is also based upon user-selected samples from the input image; and (ii) classification step, where each pixel of the input image is classified employing the corresponding classifier. The obtained results were compared against a Ground-Truth (GT) image, performed by a human expert, using two distinct evaluation metrics, indicating the most suitable combination of color-texture descriptors and classifiers able to solve the segmentation problem of specific cultures obtained from UAV images.
机译:在本文中,我们提出了监督分类器和图像特征的比较,用于从无人机(UAV)捕获的航空图像的作物行分割。主要目标是研究最适合解决此特定问题的方法,并定量测试它们对行模式的鲁棒分割的性能。为此,我们对专门用于航拍图像行分割的最新方法进行了系统的文献综述,并且出于比较目的,我们实施了最突出的方法。大多数使用的颜色纹理特征面对大多数使用的分类器,导致总共48种组合,通常具有基于以下两个步骤的构造概念:(i)有监督的训练步骤,以根据所选颜色建立一些模型,纹理特征空间,其也基于用户从输入图像中选择的样本; (ii)分类步骤,其中使用对应的分类器对输入图像的每个像素进行分类。将获得的结果与人类专家使用两个不同的评估指标进行的地面真实(GT)图像进行比较,表明颜色纹理描述符和分类器的最合适组合能够解决从中获得的特定文化的分割问题无人机图像。

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  • 来源
    《Applied Artificial Intelligence》 |2020年第4期|271-291|共21页
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  • 作者单位

    Univ Fed Santa Catarina Comp Sci Post Grad Program PPGCC Florianopolis SC Brazil|Fed Univ Santa Catarina UFSC Dept Informat & Stat INE Brazilian Inst Digital Convergence INCoD Florianopolis SC Brazil;

    Fed Univ Santa Catarina UFSC Dept Informat & Stat INE Brazilian Inst Digital Convergence INCoD Florianopolis SC Brazil|Univ Fed Santa Catarina Automat & Syst Engn Postgrad Program DAS Florianopolis SC Brazil;

    Fed Univ Santa Catarina UFSC Dept Informat & Stat INE Brazilian Inst Digital Convergence INCoD Florianopolis SC Brazil;

    Fed Univ Santa Catarina UFSC Dept Informat & Stat INE Brazilian Inst Digital Convergence INCoD Florianopolis SC Brazil|Univ Fed Santa Catarina Dept Comp DEC Ararangua SC Brazil;

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