首页> 外文会议>ISPRS Congress >THE APPLICATION OF SUPPORT VECTOR MACHINE (SVM) USING CIELAB COLOR MODEL, COLOR INTENSITY AND COLOR CONSTANCY AS FEATURES FOR ORTHO IMAGE CLASSIFICATION OF BENTHIC HABITATS IN HINATUAN, SURIGAO DEL SUR, PHILIPPINES
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THE APPLICATION OF SUPPORT VECTOR MACHINE (SVM) USING CIELAB COLOR MODEL, COLOR INTENSITY AND COLOR CONSTANCY AS FEATURES FOR ORTHO IMAGE CLASSIFICATION OF BENTHIC HABITATS IN HINATUAN, SURIGAO DEL SUR, PHILIPPINES

机译:支持向量机(SVM)的应用使用Cielab颜色模型,色彩强度和色彩恒定作为菲律宾苏里源河南省Benthic Heavitats的邻近图像分类的特征

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This study demonstrates the application of CIELAB, Color intensity, and One Dimensional Scalar Constancy as features for image recognition and classifying benthic habitats in an image with the coastal areas of Hinatuan, Surigao Del Sur, Philippines as the study area. The study area is composed of four datasets, namely: (a) Blk66L005, (b) Blk66L021, (c) Blk66L024, and (d) Blk66L0114. SVM optimization was performed in Matlab software with the help of Parallel Computing Toolbox to hasten the SVM computing speed. 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 hyper-planes 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 classification results of the sampling site yielded an accuracy of 98.85% which confirms the reliability of remote sensing techniques and analysis employed to orthophotos like the CIELAB, Color Intensity and One dimensional scalar constancy and the use of SVM classification algorithm in classifying benthic habitats.
机译:本研究表明了Cielab,Color强度和一维标量的应用作为图像识别和对菲律宾沿海地区的图像识别和分类底栖栖息地的特征,菲律宾作为研究区。研究区域由四个数据集组成,即:(a)blk66l005,(b)blk66l021,(c)blk66l024和(d)blk66l0114。在Patlab软件中执行SVM优化,并在并行计算工具箱的帮助下进行加速SVM计算速度。用于收集SVM程序样品的图像是BLK66L0114,其中收集并加工了与岩石,沙子,海,鱼钢和海草的134,516个样品的红树林,可能的珊瑚存在。然后将收集的样本用作监督学习算法的训练集和创建类定义。从多维特征空间中分离从另一个类的学习超平面可以被认为是作为超级特征,然后将用于在Ecognation软件中开发C的C(分类器)规则。采样网站的分类结果产生了98.85%的精度,其证实了遥感技术的可靠性和用于正交,如Cielab,Color强度和一维标量常量和SVM分类算法在分类底栖栖息地中使用SVM分类算法的可靠性。

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