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首页> 外文期刊>GIScience & remote sensing >Identifying Mangrove Species and Their Surrounding Land Use and Land Cover Classes Using an Object-Oriented Approach with a Lacunarity Spatial Measure
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Identifying Mangrove Species and Their Surrounding Land Use and Land Cover Classes Using an Object-Oriented Approach with a Lacunarity Spatial Measure

机译:使用面向对象的方法与空间稀缺度度量来识别红树林物种及其周围的土地利用和土地覆盖类别

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Accurate and reliable information on the spatial distribution of mangrove species is needed for a wide variety of applications, including sustainable management of mangrove forests, conservation and reserve planning, ecological and biogeographical studies, and invasive species management. Remotely sensed data have been used for such purposes with mixed results. Our study employed an object-oriented approach with the use of a lacunarity technique to identify different mangrove species and their surrounding land use and land cover classes in a tsunami-affected area of Thailand using Landsat satellite data. Our results showed that the object-oriented approach with lacunarity-transformed bands is more accurate (overall accuracy 94.2%; kappa coefficient = 0.91) than traditional per-pixel classifiers (overall accuracy 62.8%; and kappa coefficient = 0.57).
机译:广泛应用需要准确,可靠的红树林物种分布信息,包括红树林可持续管理,保护区和保护区规划,生态和生物地理研究以及入侵物种管理。遥感数据已用于此类目的,结果混合。我们的研究采用了一种面向对象的方法,并使用了盲点技术,利用Landsat卫星数据来识别泰国海啸受灾地区的不同红树林物种及其周围的土地利用和土地覆盖类别。我们的研究结果表明,具有盲点转换带的面向对象方法比传统的按像素分类器(总体准确度为62.8%; kappa系数= 0.57)更准确(总体准确度为94.2%; kappa系数= 0.91)。

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