Abstract

Since trees are a vital part of urban green infrastructure, automatic mapping of individual urban trees is becoming increasingly important for city management and planning. Although deep-learning-based object detection networks are the state-of-the-art in computer vision, their adaptation to individual tree detection in urban areas has scarcely been studied. Some existing works have employed 2D object detection networks for this purpose. However, these have used three-dimensional information only in the form of projected feature maps. In contrast, we exploited the full 3D potential of airborne laser scanning (ALS) point clouds by using a 3D neural network for individual tree detection. Specifically, a sparse convolutional network was used for 3D feature extraction, feeding both semantic segmentation and circular object detection outputs, which were combined for further increased accuracy. We demonstrate the capability of our approach on an urban topographic ALS point cloud with 10,864 hand-labeled ground truth trees. Our method achieved an average precision of 83% regarding the common 0.5 intersection over union criterion. 85% percent of the stems were found correctly with a precision of 88%, while tree area was covered by the individual tree detections with an F1 accuracy of 92%. Thereby, we outperformed traditional delineation baselines and recent detection networks.

Highlights

  • Urban trees are an essential part of cities’ green infrastructure and draw particular attention in city development and environment preservation

  • Since this paper focused on individual object detection, the reader is referred to [82] for further details on the semantic segmentation of airborne laser scanning (ALS) point clouds with sparse convolutional network (SCN)

  • We compare the accuracy of our method (SCN-OD) on the test set to the baselines from the previous section through a set of evaluation metrics both on the object level, as well as the pixel level

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Summary

Introduction

Urban trees are an essential part of cities’ green infrastructure and draw particular attention in city development and environment preservation. E.g., trees and shrubs, have positive effects on urban quality of living. Because trees are of particular concern, they are managed in special tree cadasters, containing information such as position, height, crown and trunk diameter, health, and species of the individual trees. These inventories represent vital information for traffic safety, monitoring, and strategic planning of urban green infrastructure, as well as a wide range of research fields [8–11]

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