A Simulation of Image-Assisted Forest Monitoring for National Inventories

The efficiency of national forest monitoring efforts can be increased by the judicious incorporation of ancillary data. For instance, a fixed number of ground plots might be used to inform a larger set of annual estimates by observing a smaller proportion of the plots each year while augmenting each...

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Main Author: Francis A. Roesch
Format: Article
Language:English
Published: MDPI AG 2016-09-01
Series:Forests
Subjects:
Online Access:http://www.mdpi.com/1999-4907/7/9/204
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spelling doaj-d0f4e5dd62d34fd8a6978c4bfcc747602020-11-24T22:26:47ZengMDPI AGForests1999-49072016-09-017920410.3390/f7090204f7090204A Simulation of Image-Assisted Forest Monitoring for National InventoriesFrancis A. Roesch0Southern Research Station, USDA Forest Service, 200 WT Weaver Blvd., Asheville, NC 28804, USAThe efficiency of national forest monitoring efforts can be increased by the judicious incorporation of ancillary data. For instance, a fixed number of ground plots might be used to inform a larger set of annual estimates by observing a smaller proportion of the plots each year while augmenting each annual estimate with ancillary data in order to reduce overall costs while maintaining a desired level of accuracy. Differencing successive geo-rectified remotely sensed images can conceivably provide forest change estimates at a scale and level of accuracy conducive to the improvement of temporally relevant forest attribute estimates. Naturally, the degree of improvement in the desired estimates is highly dependent on the relationships between the spatial-temporal scales of ground plot and remotely sensed observations and the desired spatial-temporal scale of estimation. In this paper, fixed scales of observation for each data source are used to explore the value of three different levels of information available from the remotely sensed image-change estimates. Four populations are simulated and sampled under four sampling error structures. The results show that the image change estimates (ICE) can be used to significantly reduce bias for annual estimates of harvest and mortality and that improved estimation of harvest and mortality can sometimes, but not always, contribute to better estimates of standing volume.http://www.mdpi.com/1999-4907/7/9/204forest monitoringsample designestimationauxiliary informationremote sensing
collection DOAJ
language English
format Article
sources DOAJ
author Francis A. Roesch
spellingShingle Francis A. Roesch
A Simulation of Image-Assisted Forest Monitoring for National Inventories
Forests
forest monitoring
sample design
estimation
auxiliary information
remote sensing
author_facet Francis A. Roesch
author_sort Francis A. Roesch
title A Simulation of Image-Assisted Forest Monitoring for National Inventories
title_short A Simulation of Image-Assisted Forest Monitoring for National Inventories
title_full A Simulation of Image-Assisted Forest Monitoring for National Inventories
title_fullStr A Simulation of Image-Assisted Forest Monitoring for National Inventories
title_full_unstemmed A Simulation of Image-Assisted Forest Monitoring for National Inventories
title_sort simulation of image-assisted forest monitoring for national inventories
publisher MDPI AG
series Forests
issn 1999-4907
publishDate 2016-09-01
description The efficiency of national forest monitoring efforts can be increased by the judicious incorporation of ancillary data. For instance, a fixed number of ground plots might be used to inform a larger set of annual estimates by observing a smaller proportion of the plots each year while augmenting each annual estimate with ancillary data in order to reduce overall costs while maintaining a desired level of accuracy. Differencing successive geo-rectified remotely sensed images can conceivably provide forest change estimates at a scale and level of accuracy conducive to the improvement of temporally relevant forest attribute estimates. Naturally, the degree of improvement in the desired estimates is highly dependent on the relationships between the spatial-temporal scales of ground plot and remotely sensed observations and the desired spatial-temporal scale of estimation. In this paper, fixed scales of observation for each data source are used to explore the value of three different levels of information available from the remotely sensed image-change estimates. Four populations are simulated and sampled under four sampling error structures. The results show that the image change estimates (ICE) can be used to significantly reduce bias for annual estimates of harvest and mortality and that improved estimation of harvest and mortality can sometimes, but not always, contribute to better estimates of standing volume.
topic forest monitoring
sample design
estimation
auxiliary information
remote sensing
url http://www.mdpi.com/1999-4907/7/9/204
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