College of Computer Science and Information Technology, Central South University of Forestry and Technology, Changsha, China.
Hunan Linkeda Information Science and Technology Co.LTD, Changsha, China.
PLoS One. 2023 Feb 24;18(2):e0281084. doi: 10.1371/journal.pone.0281084. eCollection 2023.
The health of the trees in the forest affects the ecological environment, so timely detection of Standing Dead Trees (SDTs) plays an important role in forest management. However, due to the large spatial scope of forests, it is difficult to find SDTs through conventional approaches such as field inventories. In recent years, the development of deep learning and Unmanned Aerial Vehicle (UAV) has provided technical support for low-cost real-time monitoring of SDTs, but the inability to fully utilize global features and the difficulty of small-scale SDTs detection have brought challenges to the detection of SDTs in visible light images. Therefore, this paper proposes a multi-scale attention mechanism detection method for identifying SDTs in UAV RGB images. This method takes Faster-RCNN as the basic framework and uses Swin-Transformer as the backbone network for feature extraction, which can effectively obtain global information. Then, features of different scales are extracted through the feature pyramid structure and feature balance enhancement module. Finally, dynamic training is used to improve the quality of the model. The experimental results show that the algorithm proposed in this paper can effectively identify the SDTs in the visible light image of the UAV with an accuracy of 95.9%. This method of SDTs identification can not only improve the efficiency of SDTs exploration, but also help relevant departments to explore other forest species in the future.
森林中树木的健康状况会影响生态环境,因此及时检测枯立木(SDT)在森林管理中起着重要作用。然而,由于森林的空间范围较大,通过传统的方法(如实地清查)很难发现 SDT。近年来,深度学习和无人机(UAV)的发展为低成本实时监测 SDT 提供了技术支持,但无法充分利用全局特征和小规模 SDT 检测的困难,给可见光图像中 SDT 的检测带来了挑战。因此,本文提出了一种用于识别 UAV RGB 图像中 SDT 的多尺度注意机制检测方法。该方法以 Faster-RCNN 为基本框架,使用 Swin-Transformer 作为骨干网络进行特征提取,能够有效地获取全局信息。然后,通过特征金字塔结构和特征平衡增强模块提取不同尺度的特征。最后,通过动态训练来提高模型的质量。实验结果表明,本文提出的算法能够有效地识别 UAV 可见光图像中的 SDT,准确率达到 95.9%。这种 SDT 识别方法不仅可以提高 SDT 探测的效率,还有助于相关部门在未来探索其他森林物种。