首页> 外文期刊>Landscape Ecology >Detecting dominant landscape objects through multiple scales: An integration of object-specific methods and watershed segmentation
【24h】

Detecting dominant landscape objects through multiple scales: An integration of object-specific methods and watershed segmentation

机译:通过多种尺度检测主要景观对象:特定对象方法和分水岭分割的集成

获取原文
获取原文并翻译 | 示例
           

摘要

Complex systems, such as landscapes, are composed of different critical levels of organization where interactions are stronger within levels than among levels, and where each level operates at relatively distinct time and spatial scales. To detect significant features occurring at specific levels of organization in a landscape, two steps are required. First, a multiscale dataset must be generated from which these features can emerge. Second, a procedure must be developed to delineate individual image-objects and identify them as they change through scale. In this paper, we introduce a framework for the automatic definition of multiscale landscape features using object-specific techniques and marker-controlled watershed segmentation. By applying this framework to a high-resolution satellite scene, image-objects of varying size and shape can be delineated and studied individually at their characteristic scale of expression. This framework involves three main steps: 1) multiscale dataset generation using an object-specific analysis and upscaling technique, 2) marker-controlled watershed transformation to automatically delineate individual image-objects as they evolve through scale, and 3) landscape feature identification to assess the significance of these image-objects in terms of meaningful landscape features. This study was conducted on an agro-forested region in southwest Quebec, Canada, using IKONOS satellite data. Results show that image-objects tend to persist within one or two scale domains, and then suddenly disappear at the next, while new image-objects emerge at coarser scale domains. We suggest that these patterns are associated to sudden shifts in the entire image structure at certain scale domains, which may correspond to critical landscape thresholds.
机译:复杂的系统(例如景观)由组织的不同关键级别组成,这些级别之间的交互作用比级别之间的交互作用更强,并且每个级别在相对不同的时间和空间范围内运作。要检测出现在组织特定级别的重要功能,需要执行两个步骤。首先,必须生成一个多尺度数据集,这些特征才能从中显现出来。其次,必须制定程序来描绘单个图像对象,并在它们随比例变化时进行识别。在本文中,我们介绍了一种使用对象特定技术和标记控制的分水岭分割自动定义多尺度景观特征的框架。通过将此框架应用于高分辨率的卫星场景,可以描绘出大小和形状各异的图像对象,并以它们的特征表达尺度进行单独研究。该框架涉及三个主要步骤:1)使用对象特定的分析和放大技术生成多尺度数据集; 2)标记控制的分水岭变换,以在各个对象按比例缩放时自动描绘它们; 3)识别景观特征以进行评估这些图像对象在有意义的景观特征方面的重要性。这项研究是使用IKONOS卫星数据在加拿大魁北克西南部的一片农林地区进行的。结果表明,图像对象倾向于在一个或两个比例域内持久,然后在下一个范围内突然消失,而新的图像对象则在较粗的比例域内出现。我们建议这些模式与整个图像结构在某些比例域上的突然变化相关,这可能与临界景观阈值相对应。

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