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Research article - Peer-reviewed, 2023

Leveraging remotely sensed non-wall-to-wall data for wall-to-wall upscaling in forest inventory

Chen, Fangting; Hou, Zhengyang; Saarela, Svetlana; McRoberts, Ronald E.; Stahl, Goran; Kangas, Annika; Packalen, Petteri; Li, Bo; Xu, Qing


Remote sensing (RS) has enhanced forest inventory with model-based inference, that is, a family of statistical procedures rigorously estimates the parameter of a variable of interest (VOI) for a spatial population, e.g., the mean or total of forest carbon for a study area. Upscaling in earth observation, alias to this estimation, aggregates VOI from a finer spatial resolution to a coarser one with reduced uncertainty, serving decision making for natural resource management at larger scales. However, conventional model-based estimation (CMB) confronts a major challenge: it only supports RS wall-to-wall data, meaning that remotely sensed data must be available in panorama and non-wall-to-wall but quality data such as lidar or even cloud-masked satellite imagery are not supported due to incomplete coverage, impeding precise upscaling with cutting-edge instruments or for large scale applications. Consequently, this study aims to develop and demonstrate the use and usefulness of RS nonwall-to-wall data for upscaling with Hierarchical model-based estimation (HMB) which incorporates a two-stage model for bridging RS non- and wall-to-wall data; and for optimizing cost-efficiency, to evaluate the effects of non-wall-to-wall sample size on upscaling precision. Three main conclusions are relevant: (1) the HMB is a variant of the CMB estimator through trading in the uncertainty of the second-stage model to enable estimation using RS non-wall-to-wall data; (2) a quality first-stage model is key to exerting the advantage of HMB relative to the CMB estimator; (3) the variance of the HMB estimator is dominated by the first-stage model variance component, indicating that increasing the sample size in the first-stage is effective for increasing the overall precision. Overall, the HMB estimator balances tradeoffs between cost, efficiency and flexibility when devising a model-based upscaling in earth observation.


Non-wall-to-wall; Wall-to-wall; Model-based inference; Two-stage modeling; Survey sampling

Published in

International Journal of Applied Earth Observation and Geoinformation
2023, Volume: 119, article number: 103314
Publisher: ELSEVIER

    UKÄ Subject classification

    Forest Science
    Remote Sensing

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