首页> 外文会议>SPIE Conference on Remote Sensing and Modeling of Ecosystems for Sustainability >Using mixture tuned match filtering to measure changes in subpixel vegetation area in Las Vegas, Nevada.
【24h】

Using mixture tuned match filtering to measure changes in subpixel vegetation area in Las Vegas, Nevada.

机译:利用混合调整匹配滤波来测量内华达拉斯维加斯亚像素植被区的变化。

获取原文

摘要

In desert cities, securing sufficient water supply to meet the needs of both existing population and future growth is a complex problem with few easy solutions. Grass lawns are a major driver of water consumption and accurate measurements of vegetation area are necessary to understand drivers of changes in household water consumption. Measuring vegetation change in a heterogeneous urban environment requires sub-pixel estimation of vegetation area. Mixture Tuned Match Filtering has been successfully applied to target detection for materials that only cover small portions of a satellite image pixel. There have been few successful applications of MTMF to fractional area estimation, despite theory that suggests feasibility. We use a ground truth dataset over ten times larger than that available for any previous MTMF application to estimate the bias between ground truth data and matched filter results. We find that the MTMF algorithm underestimates the fractional area of vegetation by 5-10%, and calculate that averaging over 20 to 30 pixels is necessary to correct this bias We conclude that with a large ground truth dataset, using MTMF for fractional area estimation is possible when results can be estimated at a lower spatial resolution than the base image. When this method is applied to estimating vegetation area in Las Vegas, NV spatial and temporal trends are consistent with expectations from known population growth and policy goals.
机译:在沙漠城市,确保足够的供水以满足现有人口的需求,未来的增长是一个很好的解决方案的复杂问题。草坪是水消耗的主要驱动因素,准确测量植被面积是必要的,以了解家庭用水量的变化驱动因素。测量异质城市环境中的植被变化需要植被区域的子像素估计。混合调谐匹配滤波已成功应用于仅覆盖卫星图像像素的小部分的材料的目标检测。尽管有理论表明可行性,但仍有很少的成功应用MTMF到分数区域估计。我们使用的是一个比以前的MTMF应用程序更大的地面真理数据集超过10倍,以估计地面真实数据和匹配的过滤结果之间的偏差。我们发现MTMF算法低估了5-10%的植被的小数区域,并且计算平均超过20到30个像素来纠正这种偏差,我们得出结论,使用MTMF进行分数区域估计的MTMF是为了分数区域估计当结果可以估计比基本图像较低的空间分辨率时可能。当该方法应用于拉斯维加斯的植被区域时,NV空间和时间趋势与已知人口增长和政策目标的期望一致。

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