Xu Liang, Saatchi Sassan S, Yang Yan, Yu Yifan, White Lee
Institute of the Environment and Sustainability, University of California, Los Angeles, CA 90095 USA.
Institute of the Environment and Sustainability, University of California, Los Angeles, CA 90095 USA ; Jet Propulsion Laboratory, California Institute of Technology, Pasadena, CA 91109 USA.
Carbon Balance Manag. 2016 Aug 24;11(1):18. doi: 10.1186/s13021-016-0062-9. eCollection 2016 Dec.
Mapping tropical forest structure is a critical requirement for accurate estimation of emissions and removals from land use activities. With the availability of a wide range of remote sensing imagery of vegetation characteristics from space, development of finer resolution and more accurate maps has advanced in recent years. However, the mapping accuracy relies heavily on the quality of input layers, the algorithm chosen, and the size and quality of inventory samples for calibration and validation.
By using airborne lidar data as the "truth" and focusing on the mean canopy height (MCH) as a key structural parameter, we test two commonly-used non-parametric techniques of maximum entropy (ME) and random forest (RF) for developing maps over a study site in Central Gabon. Results of mapping show that both approaches have improved accuracy with more input layers in mapping canopy height at 100 m (1-ha) pixels. The bias-corrected spatial models further improve estimates for small and large trees across the tails of height distributions with a trade-off in increasing overall mean squared error that can be readily compensated by increasing the sample size.
A significant improvement in tropical forest mapping can be achieved by weighting the number of inventory samples against the choice of image layers and the non-parametric algorithms. Without future satellite observations with better sensitivity to forest biomass, the maps based on existing data will remain slightly biased towards the mean of the distribution and under and over estimating the upper and lower tails of the distribution.
绘制热带森林结构对于准确估算土地利用活动的排放和清除量至关重要。随着可从太空获取大量有关植被特征的遥感影像,近年来更高分辨率和更精确地图的绘制取得了进展。然而,制图精度在很大程度上依赖于输入图层的质量、所选算法以及用于校准和验证的清查样本的大小和质量。
以机载激光雷达数据作为“真值”,并将平均树冠高度(MCH)作为关键结构参数,我们在加蓬中部的一个研究地点测试了两种常用的非参数技术——最大熵(ME)和随机森林(RF),用于绘制地图。制图结果表明,在绘制100米(1公顷)像素的树冠高度图时,两种方法在增加更多输入图层的情况下都提高了精度。偏差校正后的空间模型进一步改善了对高度分布两端的小树和大树的估计,代价是总体均方误差增加,但这可以通过增加样本量轻松弥补。
通过根据图像图层的选择和非参数算法权衡清查样本数量,可以显著提高热带森林制图的精度。如果未来没有对森林生物量更敏感的卫星观测,基于现有数据的地图仍将略微偏向分布均值,并且低估和高估分布的上下两端。