首页> 外文期刊>Australian Forestry >Comparing yield estimates derived from LiDAR and aerial photogrammetric point-cloud data with cut-to-length harvester data in a Pinus radiata plantation in Tasmania
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Comparing yield estimates derived from LiDAR and aerial photogrammetric point-cloud data with cut-to-length harvester data in a Pinus radiata plantation in Tasmania

机译:比较塔斯马尼亚毒素辐射生殖器植物综合收割机数据的激光雷达和空中摄影测量点云数据的产量估计

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摘要

Accurate mapping of timber resources in commercial forestry is essential to support planning and management operations of forest growers. Over the last two decades, Light Detection and Ranging (LiDAR) systems have been successfully deployed for the collection of point-cloud data for accurate modelling of forest attributes that are traditionally obtained from plot-based inventory. In recent years, studies conducted in North America and Scandinavia have shown that three-dimensional point clouds derived from digital aerial photogrammetric (AP) data can be used to model forest attributes with a level of accuracy similar to traditional LiDAR-based approaches. A comparative analysis of the performance of the two point-cloud technologies has never been attempted in Australian plantations. In this study, we compared the performance of LiDAR-based and AP-based point clouds for estimating total recoverable volume in a Pinus radiata plantation at Springfield in north-eastern Tasmania, using volume data collected by harvesting machines as a reference. Our results showed that AP point clouds can be used for mapping total recoverable volume in P. radiata plantations with levels of accuracy that are comparable to LiDAR-based estimates. Plot-level relative root mean squared error (RMSE%) values were 23.85% for LiDAR and ranged from 22.07% to 27.10% for the three AP dense point-cloud settings evaluated. At the stand level, RMSE% decreased to 9.86% and 8.91% for LiDAR and AP, respectively. Both LiDAR-based and AP-based modelled volumes showed a close agreement with volumes measured using harvester head data, demonstrating the potential of AP technology for the management and planning of forestry operations in softwood plantations.
机译:商业林业中木材资源的准确映射对于森林种植者的规划和管理运营至关重要。在过去的二十年中,已经成功部署了光检测和测距(LIDAR)系统,用于集合用于精确建模的森林属性,传统地从基于绘图的库存中获得的精确建模。近年来,在北美和斯堪的纳维亚进行的研究表明,从数字空中摄影测量(AP)数据中得出的三维点云可用于模拟森林属性,其精度与基于传统的激光雷达的方法类似。对澳大利亚种植园的两点云技术表现的比较分析从未尝试过尝试。在这项研究中,我们将基于激光雷达和AP基点云的性能进行了比较,用于估算塔斯马尼亚州斯普林菲尔德斯普林菲尔达的总可回收体积,使用收获机器作为参考的体积数据。我们的研究结果表明,AP点云可用于映射P. radiata种植园中的总可回收体积,其精度与基于LIDAR的估计相当。 LIDAR的情节级相对根平均平方误差(RMSE%)值为23.85%,三个AP密集点云设置的22.07%至27.10%。在立场等级,LIDAR和AP的RMSE%降至9.86%和8.91%。基于LIDAR的和基于AP的模型卷的两个卷显示了使用收割机头数据测量的卷的密切协议,展示了软木种植园中林业业务管理和规划的潜力。

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