While the availability of large and diverse datasets has contributed to significant breakthroughs in autonomous driving and indoor applications, forestry applications are still lagging behind and new forest datasets would most certainly contribute to achieving significant progress in the development of data-driven methods for forest-like scenarios. This paper introduces a forest dataset called \textit{FinnWoodlands}, which consists of RGB stereo images, point clouds, and sparse depth maps, as well as ground truth manual annotations for semantic, instance, and panoptic segmentation. \textit{FinnWoodlands} comprises a total of 4226 objects manually annotated, out of which 2562 objects (60.6\%) correspond to tree trunks classified into three different instance categories, namely "Spruce Tree", "Birch Tree", and "Pine Tree". Besides tree trunks, we also annotated "Obstacles" objects as instances as well as the semantic stuff classes "Lake", "Ground", and "Track". Our dataset can be used in forestry applications where a holistic representation of the environment is relevant. We provide an initial benchmark using three models for instance segmentation, panoptic segmentation, and depth completion, and illustrate the challenges that such unstructured scenarios introduce.
翻译:本文介绍了一种名为\textit{FinnWoodlands}的森林数据集,其中包括RGB立体图像、点云和稀疏深度图,以及语义、实例和全景分割的地面真值手工注释。 \textit{FinnWoodlands}共手动注释了4226个物体,其中2562个物体(60.6%)对应于被分类为“云杉树”、“白桦树”和“红松树”的三个不同实例类别的树干。除了树干,我们还将“障碍物”对象作为实例标注,以及语义物品类别“湖泊”、“地面”和“轨道”。我们的数据集可以在需要全面表示环境的林业应用中使用。我们使用三个模型进行实例分割、全景分割和深度补全的初始基准测试,并说明这种不受限场景所带来的挑战。