首页> 外文会议>Asian conference on remote sensing;ACRS >BENTHIC HABITAT CLASSIFICATION AND MAPPING USING SUPPORT VECTOR MACHINE ALGORITHM IN HINATUAN, SURIGAO DEL SUR, PHILIPPINES
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BENTHIC HABITAT CLASSIFICATION AND MAPPING USING SUPPORT VECTOR MACHINE ALGORITHM IN HINATUAN, SURIGAO DEL SUR, PHILIPPINES

机译:菲律宾苏里高河南岸的支持向量机算法对生境栖息地的分类和制图

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This study demonstrates the application of classification techniques using Support Vector Machine (SVM) for benthic habitat mapping. The orthophotos of the coastal area of Hinatuan, Surigao Del Sur, which undergone quality checking, was used for this study. Optimization procedure was performed in matrix laboratory (MATLAB) software with parallel computing to help hasten the process due to its enormous size. The study area is composed of four datasets, namely: (a) Blk66L005, (b) Blk66L021, (c) Blk66L024, and (d) Blk66L0114. The image used for collecting samples for SVM procedure was Blk66L0114 in which a total of 134,516 sample objects of mangrove, possible coral existence with rocks, sand, sea, fish pens and sea grasses were collected and processed. The collected samples were then used as training sets for the supervised learning algorithm and for the creation of class definitions. The learned hyperplanes separating one class from another in the multi-dimensional feature space can be thought of as a super feature which will then be used in developing the C (classifier) rule set in eCognition software. The feature used for SVM algorithm are the following: CIE L~*a~*b~*, RGB Intensity, and One Dimensional Scalar Constancy. The classification results of the sampling site yielded an accuracy of 98.85% which confirms the reliability of remote sensing techniques and analyses employed to orthophotos like the color transformation and illumination correlation and the use of SVM classification algorithm in mapping benthic habitats.
机译:这项研究演示了使用支持向量机(SVM)进行底栖生境制图的分类技术的应用。本研究使用了经过质量检查的苏里高德尔苏尔Hinatuan沿海地区的正射照片。优化程序是在具有并行计算功能的矩阵实验室(MATLAB)软件中执行的,由于其庞大的规模,有助于加快处理过程。研究区域由四个数据集组成,即:(a)Blk66L005,(b)Blk66L021,(c)Blk66L024和(d)Blk66L0114。用于支持SVM程序的样本采集的图像是Blk66L0114,其中共采集和处理了134,516个红树林样本,可能存在珊瑚的岩石,沙子,海洋,鱼笔和海草样本。然后将收集的样本用作监督学习算法和类定义创建的训练集。可以将在多维特征空间中将一个类与另一个类分开的学习到的超平面视为一个超级特征,然后将其用于开发eCognition软件中的C(分类器)规则集。用于SVM算法的功能如下:CIE L〜* a〜* b〜*,RGB强度和一维标量常数。采样地点的分类结果得出98.85%的准确度,这证实了遥感技术和正射像分析的可靠性,如色彩转换和照明相关性以及在底栖生境的制图中使用SVM分类算法,这些分析都得到了证实。

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