The analysis of the multi-layer structure of wild forests is an important challenge of automated large-scale forestry. While modern aerial LiDARs offer geometric information across all vegetation layers, most datasets and methods focus only on the segmentation and reconstruction of the top of canopy. We release WildForest3D, which consists of 29 study plots and over 2000 individual trees across 47 000m2 with dense 3D annotation, along with occupancy and height maps for 3 vegetation layers: ground vegetation, understory, and overstory. We propose a 3D deep network architecture predicting for the first time both 3D point-wise labels and high-resolution layer occupancy rasters simultaneously. This allows us to produce a precise estimation of the thickness of each vegetation layer as well as the corresponding watertight meshes, therefore meeting most forestry purposes. Both the dataset and the model are released in open access: https://github.com/ekalinicheva/multi_layer_vegetation.
翻译:分析野生森林的多层结构是自动化大规模林业的一个重要挑战。现代空中激光成像仪提供所有植被层的几何信息,但大多数数据集和方法仅侧重于树冠顶部的分割和重建。我们发布野生森林3D,由29块研究地和47,000平方米的2000多棵树木组成,上面有密集的3D注解,还有3层植被的占用和高度图:地面植被、底部和过度。我们提议3D深层网络结构,首次预测3D点定位标签和高分辨率层占用激光仪。这使我们能够准确估计每个植被层的厚度以及相应的水密片,从而达到大多数林业目的。数据集和模型都公开发布于网站:https://github.com/ekalinicheva/multi_layer_vegetation。