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首页> 外文期刊>ISPRS Journal of Photogrammetry and Remote Sensing >A hybrid framework for single tree detection from airborne laser scanning data: A case study in temperate mature coniferous forests in Ontario, Canada
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A hybrid framework for single tree detection from airborne laser scanning data: A case study in temperate mature coniferous forests in Ontario, Canada

机译:从机载激光扫描数据检测单树的混合框架:以加拿大安大略省温带针叶林为例

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摘要

This study presents a hybrid framework for single tree detection from airborne laser scanning (ALS) data by integrating low-level image processing techniques into a high-level probabilistic framework. The proposed approach modeled tree crowns in a forest plot as a configuration of circular objects. We took advantage of low-level image processing techniques to generate candidate configurations from the canopy height model (CHM): the treetop positions were sampled within the over-extracted local maxima via local maxima filtering, and the crown sizes were derived from marker-controlled watershed segmentation using corresponding treetops as markers. The configuration containing the best possible set of detected tree objects was estimated by a global optimization solver. To achieve this, we introduced a Gibbs energy, which contains a data term that judges the fitness of the objects with respect to the data, and a prior term that prevents severe overlapping between tree crowns on the configuration space. The energy was then embedded into a Markov Chain Monte Carlo (MCMC) dynamics coupled with a simulated annealing to find its global minimum. In this research, we also proposed a Monte Carlo-based sampling method for parameter estimation. We tested the method on a temperate mature coniferous forest in Ontario, Canada and also on simulated coniferous forest plots with different degrees of crown overlap. The experimental results showed the effectiveness of our proposed method, which was capable of reducing the commission errors produced by local maxima filtering, thus increasing the overall detection accuracy by approximately 10% on all of the datasets.
机译:本研究通过将低级图像处理技术集成到高级概率框架中,提出了一种用于从机载激光扫描(ALS)数据进行单树检测的混合框架。所提出的方法将林地中的树冠建模为圆形对象的配置。我们利用低级图像处理技术从树冠高度模型(CHM)生成候选配置:通过局部最大值过滤在过度提取的局部最大值内采样树梢位置,并从标记控制下得出树冠大小分水岭分割使用相应的树梢作为标记。全局优化求解器估算了包含最佳可能检测到的树对象集的配置。为了实现这一点,我们引入了吉布斯能量,其中包含一个数据项,该数据项判断对象相对于数据的适合性;以及一个前项,其防止配置空间上树冠之间的严重重叠。然后将能量嵌入到马尔可夫链蒙特卡洛(MCMC)动力学模型中,并结合模拟退火来找出其全局最小值。在这项研究中,我们还提出了一种基于蒙特卡洛的采样方法进行参数估计。我们在加拿大安大略省的温带针叶林上以及在不同冠重度的模拟针叶林地上测试了该方法。实验结果表明了我们提出的方法的有效性,该方法能够减少由局部最大值滤波产生的佣金误差,从而在所有数据集上将整体检测精度提高了约10%。

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