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Agricultural Land Use Information Extraction in Miyajimanuma Wetland Area Based on Remote Sensing Imagery

机译:基于遥感影像的宫岛马沼湿地农业土地利用信息提取

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The availability of agricultural land use information allows decision makers and managers to establish short-term and to long-term plans for land conservation and sustainable use. The objective of this study was to develop a method for extraction of agricultural land use information based on remote sensing imagery. By combining particle swarm optimization (PSO), k-means clustering algorithm and minimum distance classifier, a PSO-k-means-based minimum distance classifier for agricultural land use classification was developed. Crop planting information was collected and divided into five classes: water bodies, paddy fields, bean fields, wheat fields and others (windbreak, roads, rare areas, and buildings, etc.). K-means, a widely used algorithm in pattern recognition for unsupervised classification, became a part of supervised classification by using PSO to find the optimal initial position vectors in a training sample pretreatment process. The optimal cluster of each subclass was finally used for minimum distance classification. The results obtained from Miyajimanuma wetland land use information extraction showed that merely using a small feature space composed of the first three principal components of a SPOT 5 image enabled classification accuracy of 93%.
机译:农业土地利用信息的可获得性使决策者和管理者能够制定短期和长期的土地保护和可持续利用计划。这项研究的目的是开发一种基于遥感图像的农业土地利用信息的提取方法。通过结合粒子群优化算法(PSO),k均值聚类算法和最小距离分类器,开发了基于PSO-k均值的农业土地利用分类最小距离分类器。收集了作物种植信息,并将其分为五类:水体,稻田,豆田,麦田等(防风林,道路,稀有地区和建筑物等)。通过使用PSO在训练样本预处理过程中找到最佳初始位置矢量,K-means是一种广泛用于模式识别的非监督分类算法,已成为监督分类的一部分。最后,将每个子类的最佳聚类用于最小距离分类。从宫岛马沼湿地土地利用信息提取中获得的结果表明,仅使用由SPOT 5图像的前三个主要成分组成的小特征空间,即可实现93%的分类精度。

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