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An Improved Method for Individual Tree Segmentation in Complex Urban Scenes Based on Using Multispectral LiDAR by Deep Learning

37

Citations

46

References

2024

Year

Abstract

Urban trees, as a characteristic element of the urban ecosystem, exert significant influences on climate supervision. Therefore, the extraction of individual trees in urban areas holds significant research value. However, the complexity of features in urban areas poses challenges to existing single tree segmentation algorithms, as they may be influenced by other non-tree features. In this study, to reduce the influence of non-tree categories, enhance identification of edge features between adjacent tree crowns and achieve precise delineation results of single urban tree, an improved multi-stage method was proposed for tree points extraction and individual tree segmentation in urban scenes using multispectral LiDAR. Firstly, the original three single-channel point clouds were pre-processed by intensity interpolation to generate three-wavelength multispectral point cloud. Secondly, the Point Transformer deep learning network was employed for extracting urban tree points. Thirdly, an improved tree mapping algorithm was introduced for individual tree segmentation in urban scenes, utilizing the extracted tree points. Finally, manual individual tree labeling and the high-resolution Digital Orthophoto Map (DOM) of the region was incorporated to measure the delineation precision of individual tree. It shows that the IoU of tree category in urban scene reaches 96.0%. Moreover, the F1-score for overall individual tree segmentation attains 92.8%. And, a comparison with existing algorithms reveals that the proposed method outperforms traditional raster-based watershed method or point cloud clustering-based layer-stacking approach in urban scene, improving the overall accuracy of single tree segmentation by 21.9% and 16.0%, respectively. These results highlight the enhanced applicability of the proposed multi-stage algorithm for urban scenes.

References

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