首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Use of textural measurements to map invasive wetland plants in the Hudson River National Estuarine Research Reserve with IKONOS satellite imagery
【24h】

Use of textural measurements to map invasive wetland plants in the Hudson River National Estuarine Research Reserve with IKONOS satellite imagery

机译:使用纹理测量值绘制带有IKONOS卫星图像的哈德逊河国家河口研究保护区中的入侵性湿地植物

获取原文
获取原文并翻译 | 示例
获取外文期刊封面目录资料

摘要

At this point, models, and accompanying field data, that could be used to predict the likely response of estuaries and tidal marshes to future environmental change are lacking. To improve this situation, monitoring efforts in these complex ecosystems need to be intensified, and new, efficient monitoring techniques should be developed. In this context, our research assessed the use of IKONOS satellite imagery to map plant communities at Tivoli Bays, in the Hudson River National Estuarine Research Reserve (HRNERR). Tivoli Bays, a freshwater tidal wetland, contains a unique assemblage of plant communities, including three invasive plants (Trapa natans, Phragmites australis, and Lythrum salicaria). To study the effects of textural information on the accuracy of land cover maps produced for the HRNERR, seven different 11-class land cover maps were produced using a maximum-likelihood classification on seven combinations of spectral and textural data derived from an IKONOS image. Conventional contingency tables served as a basis for an accuracy assessment of these maps. The overall classification accuracies, as assessed by the contingency tables, ranged from 45% to 77.7%. The maximum-likelihood classification relying on four spectral and four 5-by-5 filter textural bands (created by superposing a textural filter separately on each band of the IKONOS image) had the lowest overall accuracy, whereas the one based on four spectral and four 3-by-3 filter textural bands associated with all segments, identified by an object-based classification of the IKONOS image, had the highest accuracy. Results suggest that a combination of per-pixel classification and incorporation of texture for segments generated through an object-based classification slightly increases classification accuracy from 76.2% for the maximum-likelihood classification of the four spectral bands of the IKONOS image to 77.7% for the combination of spectral and textural information produced for selected segments. Further analysis indicates that better results may be obtained by using other types of data within the segments and that the traditional approach to the selection of training and accuracy sites may negatively bias the results for a combination per-pixel and object-based classification.
机译:在这一点上,缺乏可用于预测河口和潮汐沼泽对未来环境变化的可能响应的模型以及相关的现场数据。为了改善这种情况,需要加强在这些复杂生态系统中的监测工作,并应开发新的有效监测技术。在这种情况下,我们的研究评估了使用IKONOS卫星图像来绘制哈德逊河国家河口研究保护区(HRNERR)中蒂沃利湾的植物群落。 Tivoli Bays是一个淡水潮汐湿地,拥有独特的植物群落,其中包括三种入侵植物(南帝汶(Trapa natans),芦苇(Phragmites australis)和千屈菜(Lythrum salicaria)。为了研究纹理信息对为HRNERR生成的土地覆盖图的准确性的影响,使用最大似然分类对源自IKONOS图像的光谱和纹理数据的7种组合制作了7种不同的11类土地覆盖图。常规列联表作为这些地图准确性评估的基础。通过权变表评估的总体分类准确性在45%至77.7%之间。最大似然分类依赖于四个光谱和四个5×5滤镜纹理带(通过将纹理滤镜分别叠加在IKONOS图像的每个波段上而创建),其总体准确性最低,而基于四个光谱和四个由IKONOS图像的基于对象的分类确定的,与所有段关联的3×3滤镜纹理带具有最高的准确性。结果表明,通过基于对象的分类生成的片段的按像素分类和纹理合并的组合,可使分类准确度从IKONOS图像四个光谱带的最大似然分类的76.2%略微提高到77.7%。为选定片段生成的光谱和纹理信息的组合。进一步的分析表明,通过使用分段内的其他类型的数据可以获得更好的结果,并且传统的训练和准确性位置选择方法可能会对按像素分类和基于对象分类的组合产生不利影响。

著录项

相似文献

  • 外文文献
  • 中文文献
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