论文标题
基于航空摄影和深度学习的日本森林中树种的识别
Identification of Tree Species in Japanese Forests based on Aerial Photography and Deep Learning
论文作者
论文摘要
天然森林是复杂的生态系统,其树种分布及其生态系统功能仍然不太了解。这些森林的可持续管理非常重要,因为它们在气候调节,生物多样性,土壤侵蚀和预防灾难中的重要作用以及他们提供的许多其他生态系统服务。尤其是在日本,天然林主要位于陡峭的山脉,因此,与计算机视觉结合使用空中图像是可以应用于森林研究的重要现代工具。 Thus, this study constitutes a preliminary research in this field, aiming at classifying tree species in Japanese mixed forests using UAV images and deep learning in two different mixed forest types: a black pine (Pinus thunbergii)-black locust (Robinia pseudoacacia) and a larch (Larix kaempferi)-oak (Quercus mongolica) mixed forest.我们的结果表明,可以鉴定出具有62.6%真实阳性(TP)和98.1%真实负面因素(TN)的黑色蝗虫树,而落叶树(37.4%TP和97.7%TN)达到了较低的精度。
Natural forests are complex ecosystems whose tree species distribution and their ecosystem functions are still not well understood. Sustainable management of these forests is of high importance because of their significant role in climate regulation, biodiversity, soil erosion and disaster prevention among many other ecosystem services they provide. In Japan particularly, natural forests are mainly located in steep mountains, hence the use of aerial imagery in combination with computer vision are important modern tools that can be applied to forest research. Thus, this study constitutes a preliminary research in this field, aiming at classifying tree species in Japanese mixed forests using UAV images and deep learning in two different mixed forest types: a black pine (Pinus thunbergii)-black locust (Robinia pseudoacacia) and a larch (Larix kaempferi)-oak (Quercus mongolica) mixed forest. Our results indicate that it is possible to identify black locust trees with 62.6 % True Positives (TP) and 98.1% True Negatives (TN), while lower precision was reached for larch trees (37.4% TP and 97.7% TN).