基于遥感影像的油棕树自动计数GUI开发

S. Daliman, Nina Shakina Md Kamal, S. Ahmad
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引用次数: 1

摘要

提出了一种基于遥感影像的油棕单株非破坏性计数方法。本研究有三个主要目标,即确定基于SVM模型的最佳树计数技术,评估油棕树计数技术,以及开发基于油棕树识别技术的油棕树计数图形用户界面(GUI)。使用10个大小为400 × 400像素的子集图像,每个数据集根据油棕的类型分类排列,分别为成熟和年轻。本研究采用了灰度共生矩阵(GLCM)、Haar和双正交小波和模板匹配三种算法。所有三种算法都通过支持向量机(SVM)进行测试,以查看哪种算法具有最高的准确性,并将用于自动油棕树计数。还创建了图形用户界面(GUI),以便用户将来使用该功能。本研究使用的软件是MATLAB,所有的树计数过程都在该软件中进行。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Development of GUI For Automated Oil Palm Tree Counting Based On Remote Sensing Imagery
This paper presents a novel non-destructive approach for individual oil palm tree counting using remote sensing imagery. This study has three main objectives which are to identify the best techniques for tree counting based on SVM model, to assess tree counting techniques for oil palm and to develop graphic user interface (GUI) for oil palm tree counting based on oil palm tree recognition techniques. Ten subset images with size of $400 \times 400$ pixels were used and each dataset are arranged categorically according to type of oil palm, which are matured and young. Three algorithm are used in this study, which are Gray-Level Co-occurrence Matrix (GLCM), Haar and Biorthogonal wavelet and template matching. All three algorithms are tested by using Support Vector Machine (SVM) to see which algorithms gives highest accuracy and will be used for automated oil palm tree counting. Graphical User Interface (GUI) also created for user to use the function in future. Software used in this study is MATLAB and all process of tree counting are carried out in this software.
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