论文标题
使用深度学习对树皮甲虫引起的森林树死亡率的分类
Classification of Bark Beetle-Induced Forest Tree Mortality using Deep Learning
论文作者
论文摘要
树皮甲虫暴发会极大地影响世界各地的森林生态系统和服务。为了制定有效的森林政策和管理计划,至关重要的是对树木的早期发现至关重要。尽管树皮甲虫侵扰的视觉症状,但考虑到冠状叶子变色的树冠和非同质性,这项任务仍然具有挑战性。在这项工作中,提出了一种基于深度学习的方法,以有效地对单个树层的树皮甲虫攻击的不同阶段进行分类。所提出的方法使用视网膜结构(利用预先训练树冠检测的稳健特征提取主链)来训练浅子网络,以对无人驾驶汽车(无人机)捕获的图像的不同攻击阶段进行分类。此外,检查了各种数据增强策略以解决类不平衡问题,因此,为此目的选择了仿射转换为最有效的转换。实验评估通过达到98.95%的平均准确性来证明该方法的有效性,使基线方法的表现高出约10%。
Bark beetle outbreaks can dramatically impact forest ecosystems and services around the world. For the development of effective forest policies and management plans, the early detection of infested trees is essential. Despite the visual symptoms of bark beetle infestation, this task remains challenging, considering overlapping tree crowns and non-homogeneity in crown foliage discolouration. In this work, a deep learning based method is proposed to effectively classify different stages of bark beetle attacks at the individual tree level. The proposed method uses RetinaNet architecture (exploiting a robust feature extraction backbone pre-trained for tree crown detection) to train a shallow subnetwork for classifying the different attack stages of images captured by unmanned aerial vehicles (UAVs). Moreover, various data augmentation strategies are examined to address the class imbalance problem, and consequently, the affine transformation is selected to be the most effective one for this purpose. Experimental evaluations demonstrate the effectiveness of the proposed method by achieving an average accuracy of 98.95%, considerably outperforming the baseline method by approximately 10%.