...
首页> 外文期刊>Remote Sensing >Discrimination of Settlement and Industrial Area Using Landscape Metrics in Rural Region
【24h】

Discrimination of Settlement and Industrial Area Using Landscape Metrics in Rural Region

机译:利用农村景观指标判别定居区和工业区

获取原文

摘要

Detailed and precise information of land-use and land-cover (LULC) in rural area is essential for land-use planning, environment and energy management. The confusion in mapping residential and industrial areas brings problems in energy management, environmental management and sustainable land use development. However, they remain ambiguous in the former rural LULC mapping, and this insufficient supervision leads to inefficient land exploitation and a great waste of land resources. Hence, the extent and area of residential and industrial cover need to be revealed urgently. However, spectral and textural information is not sufficient for classification heterogeneity due to the similarity between different LULC types. Meanwhile, the contextual information about the relationship between a LULC feature and its surroundings still has potential in classification application. This paper attempts to discriminate settlement and industry area using landscape metrics. A feasible classification scheme integrating landscape metrics, chessboard segmentation and object-based image analysis (OBIA) is proposed. First LULC map is generated from GeoEye-1 image, which delineated distribution of different land-cover materials using traditional OBIA method with spectrum and texture information. Then, a chessboard segmentation of the whole LULC map is conducted to create landscape units in a uniform spatial area. Landscape characteristics in each square of chessboard are adopted in the classification algorithm subsequently. To analyze landscape unit scale effect, a variety of chessboard scales are tested, with overall accuracy ranging from 75% to 88%, and Kappa coefficient from 0.51 to 0.76. Optimal chessboard scale is obtained through accuracy assessment comparison. This classification scheme is then compared to two other approaches: a top-down hierarchical classification network using only spectral, textural and shape properties, and lacunarity based hierarchical classification. The distinction approach proposed is overwhelming by achieving the highest value in overall accuracy, Kappa coefficient and McNemar test. The results show that landscape properties from chessboard segment squares could provide valuable information in classification.
机译:农村地区土地利用和土地覆盖的详细,准确的信息对于土地利用规划,环境和能源管理至关重要。住宅和工业区测绘的混乱带来了能源管理,环境管理和可持续土地利用开发方面的问题。但是,在以前的农村土地利用,土地利用变化和土地制图中,它们仍然是模棱两可的,这种监督不力导致土地利用效率低下,土地资源大量浪费。因此,迫切需要揭露住宅和工业用地的范围和面积。但是,由于不同LULC类型之间的相似性,光谱和纹理信息不足以实现分类异质性。同时,关于LULC要素与其周围环境之间关系的上下文信息在分类应用中仍然具有潜力。本文尝试使用景观指标来区分居民点和工业区。提出了一种融合景观度量,棋盘分割和基于对象的图像分析(OBIA)的可行分类方案。首先从GeoEye-1图像生成LULC图,该图使用传统的OBIA方法结合光谱和纹理信息描绘了不同土地被覆材料的分布。然后,对整个LULC地图进行棋盘分割,以在统一的空间区域中创建景观单元。随后在分类算法中采用棋盘各平方的景观特征。为了分析景观单位尺度的影响,测试了各种棋盘尺度,总体精度范围为75%至88%,Kappa系数为0.51至0.76。通过精度评估比较,可获得最佳的棋盘比例。然后将该分类方案与其他两种方法进行比较:仅使用光谱,纹理和形状属性的自上而下的层次分类网络,以及基于盲点的层次分类。通过在整体精度,Kappa系数和McNemar测试中获得最高的值,提出的区分方法不胜枚举。结果表明,棋盘分割方格的景观特性可以为分类提供有价值的信息。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号