首页> 外文会议>Earth resources and environmental remote sensing/GIS applications VII >'Mangrove classification through the use of Object Oriented Classification and Support Vector Machine of LiDAR datasets: a case study in Naawan and Manticao, Misamis Oriental, Philippines'
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'Mangrove classification through the use of Object Oriented Classification and Support Vector Machine of LiDAR datasets: a case study in Naawan and Manticao, Misamis Oriental, Philippines'

机译:“通过使用LiDAR数据集的面向对象分类和支持向量机进行红树林分类:以菲律宾Misamis Oriental的Naawan和Manticao为例。”

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Mangroves are trees or shrubs that grows at the surface between the land and the sea in tropical and sub-tropical latitudes. Mangroves are essential in supporting various marine life, thus, it is important to preserve and manage these areas. There are many approaches in creating Mangroves maps, one of which is through the use of Light Detection and Ranging (LiDAR). It is a remote sensing technique which uses light pulses to measure distances and to generate three-dimensional point clouds of the Earth's surface. In this study, the topographic LiDAR Data will be used to analyze the geophysical features of the terrain and create a Mangrove map. The dataset that we have were first pre-processed using the LAStools software. It is a software that is used to process LiDAR data sets and create different layers such as DSM, DTM, nDSM, Slope, LiDAR Intensity, LiDAR number of first returns, and CHM. All the aforementioned layers together was used to derive the Mangrove class. Then, an Object-based Image Analysis (OBIA) was performed using eCognition. OBIA analyzes a group of pixels with similar properties called objects, as compared to the traditional pixel-based which only examines a single pixel. Multi-threshold and multiresolution segmentation were used to delineate the different classes and split the image into objects. There are four levels of classification, first is the separation of the Land from the Water. Then the Land class was further dived into Ground and Non-ground objects. Furthermore classification of Nonvegetation, Mangroves, and Other Vegetation was done from the Non-ground objects. Lastly Separation of the mangrove class was done through the Use of field verified training points which was then run into a Support Vector Machine (SVM) classification. Different classes were separated using the different layer feature properties, such as mean, mode, standard deviation, geometrical properties, neighbor-related properties, and textural properties. Accuracy assessment was done using a different set of field validation points. This workflow was applied in the classification of Mangroves to a LiDAR dataset of Naawan and Manticao, Misamis Oriental, Philippines. The process presented in this study shows that LiDAR data and its derivatives can be used in extracting and creating Mangrove maps, which can be helpful in managing coastal environment.
机译:红树林是生长在热带和亚热带纬度的陆地和海洋之间表面的树木或灌木。红树林对于支持各种海洋生物至关重要,因此,保护​​和管理这些地区非常重要。创建红树林地图的方法很多,其中一种是通过使用光检测和测距(LiDAR)。这是一种遥感技术,它使用光脉冲来测量距离并生成地球表面的三维点云。在这项研究中,地形LiDAR数据将用于分析地形的地球物理特征并创建红树林地图。我们首先使用LAStools软件对数据集进行了预处理。它是一款用于处理LiDAR数据集并创建不同图层(例如DSM,DTM,nDSM,坡度,LiDAR强度,LiDAR首次返回次数和CHM)的软件。所有前面提到的图层一起用于派生Mangrove类。然后,使用eCognition执行基于对象的图像分析(OBIA)。与传统的基于像素的像素(仅检查单个像素)相比,OBIA会分析一组具有相似特性的像素(称为对象)。使用多阈值和多分辨率分割来描绘不同的类别,并将图像划分为对象。有四个级别的分类,首先是土地与水的分离。然后将“土地”类别进一步分为“地面”和“非地面”对象。此外,还从非地面物体对非植被,红树林和其他植被进行了分类。最后,通过使用经过现场验证的训练点来进行红树林类的分离,然后将其运行到支持向量机(SVM)分类中。使用不同的图层特征属性(例如均值,众数,标准偏差,几何属性,与邻居相关的属性和纹理属性)将不同的类别分开。使用不同的现场验证点集进行准确性评估。将此工作流应用于红树林的分类,应用于菲律宾Misamis Oriental的Naawan和Manticao的LiDAR数据集。这项研究提出的过程表明,LiDAR数据及其衍生物可用于提取和创建红树林地图,这有助于管理沿海环境。

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