论文标题
简单:模拟树木的空中和陆地激光扫描
SimTreeLS: Simulating aerial and terrestrial laser scans of trees
论文作者
论文摘要
有许多新兴应用用于使用陆地和空中激光扫描,特别是在农业和林业领域进行数字化树木。 LIDAR点云的解释越来越依赖于依赖大量手动标记数据的数据驱动方法(例如监督的机器学习)。由于这些数据可能很昂贵,而且很难清楚地看到和手动标记,因此用模拟数据补充真实激光扫描的一种方法已成为实现这些方法潜力的必要步骤。我们提出了一个开源工具,即Simtreels(模拟树激光扫描),用于生成点云,该云使用用户定义的传感器,轨迹,树形和布局参数模拟扫描。模拟后,将材料分类以侧重的方式保存,因此叶子和木质物质是完全了解的,并且独特的标识符分开单个树木,在仿真后标记。这允许无休止的程序生成的数据具有与真实激光雷达捕获相似的特征,然后可以用于开发数据处理技术或机器学习算法的培训。为了验证我们的方法,我们使用相似的树以及相同的传感器和轨迹参数比较了模拟扫描的特征。结果表明,模拟数据与基于样本的对照的实际数据明显相似。我们还证明了Simtreels在可用的真实数据之外的上下文中的应用,模拟了新树形状,新轨迹和新布局的扫描,结果很好。 Simtreels可作为建立在公开可用库中的开源资源。
There are numerous emerging applications for digitizing trees using terrestrial and aerial laser scanning, particularly in the fields of agriculture and forestry. Interpretation of LiDAR point clouds is increasingly relying on data-driven methods (such as supervised machine learning) that rely on large quantities of hand-labelled data. As this data is potentially expensive to capture, and difficult to clearly visualise and label manually, a means of supplementing real LiDAR scans with simulated data is becoming a necessary step in realising the potential of these methods. We present an open source tool, SimTreeLS (Simulated Tree Laser Scans), for generating point clouds which simulate scanning with user-defined sensor, trajectory, tree shape and layout parameters. Upon simulation, material classification is kept in a pointwise fashion so leaf and woody matter are perfectly known, and unique identifiers separate individual trees, foregoing post-simulation labelling. This allows for an endless supply of procedurally generated data with similar characteristics to real LiDAR captures, which can then be used for development of data processing techniques or training of machine learning algorithms. To validate our method, we compare the characteristics of a simulated scan with a real scan using similar trees and the same sensor and trajectory parameters. Results suggest the simulated data is significantly more similar to real data than a sample-based control. We also demonstrate application of SimTreeLS on contexts beyond the real data available, simulating scans of new tree shapes, new trajectories and new layouts, with results presenting well. SimTreeLS is available as an open source resource built on publicly available libraries.