每年落叶的
牙冠(牙科)
树(集合论)
林业
随机森林
激光雷达
物种丰富度
农林复合经营
遥感
地理
环境科学
计算机科学
人工智能
生态学
数学
生物
数学分析
牙科
医学
作者
Kongwen Zhang,Tianning Zhang,Jane Liu
标识
DOI:10.20944/preprints202507.2398.v1
摘要
Coniferous forests in Canada play a vital role in carbon sequestration, wildlife conservation, climate change mitigation, and long-term sustainability. Traditional methods for classifying and segmenting coniferous trees have primarily relied on the direct use of spectral or LiDAR-based data. In 2024, we introduced a novel data representation method, Pseudo Tree Crown (PTC), which provides a pseudo-3D pixel-value view that enhances the informational richness of images and significantly improves classification performance. While our original implementation was successfully tested on urban and deciduous trees, this study extends the application of PTC to Canadian conifer species, including Jack Pine, Douglas Fir, Spruce, and Aspen. We address key challenges such as snow-covered backgrounds and evaluate the impact of training dataset size on classification results. Classification was performed using Random Forest, PyTorch(ResNet50), and YOLO versions v10, v11, and v12. The results demonstrate that PTC can substantially improve individual tree classification accuracy by up to 13% reaching the high 90% range.
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