Qin Tianyi, Zhao Qingjian
College of Economics and Management, Nanjing Forestry University, Nanjing, 210037, China.
Faculty of Forestry, University of Toronto, Toronto, ON, M5S 3H7, Canada.
Sci Rep. 2025 Sep 24;15(1):32710. doi: 10.1038/s41598-025-19827-5.
The classification and identification of forest tree species is of great value in the study of species diversity and forest monitoring. With the development of emerging technologies, the combination of remote sensing images and deep learning methods has become an important means to study multi-label image classification. However, nowadays, due to the small difference between tree species images, the difficulty of artificial labeling, and the difficulty of obtaining data sets, there are few studies on multi-label classification for tree species images. Therefore, taking the TreeSatAI dataset as an example, a multi-branch and multi-label image classification model (MMTSC) specifically designed for multi-source remote sensing data is proposed to classify and identify 15 tree species in the dataset. In a complex forest stand scenario with unbalanced data, our F1-Score and Precision are as high as about 72% and 82%, respectively. The visualization results of the confusion matrix and Grad-CAM heat map further verify the model's recognition ability on different categories. To comprehensively evaluate the model performance, we compared it with other state-of-the-art (SOTA) methods for multi-label image classification tasks and conducted a series of ablation experiments. Experimental results show that the MMTSC model outperforms other SOTA methods in F1-Score, Precision, Recall, and mAP. In addition, we also compared the model's backbone network DenseNet121 with the classic structures of EfficientNet-B0, ConvNeXt-Tiny, ResNet-18, MobileNetV3 and RegNetX-800MF. The evaluation results showed that the DenseNet121 architecture performed best in this task, verifying its effectiveness and adaptability as a backbone network. Finally, we use the results of the deep learning-based multi-label tree species classification model for biomass estimation, providing practical suggestions for relevant institutions, thereby contributing to the scientific management of forest resources and the improvement of carbon sequestration capacity.
林木树种的分类与识别在物种多样性研究和森林监测中具有重要价值。随着新兴技术的发展,遥感影像与深度学习方法的结合已成为研究多标签图像分类的重要手段。然而,目前由于树种图像之间差异小、人工标注困难以及数据集获取难度大,针对树种图像的多标签分类研究较少。因此,以TreeSatAI数据集为例,提出一种专门为多源遥感数据设计的多分支多标签图像分类模型(MMTSC),对数据集中的15种树种进行分类识别。在数据不平衡的复杂林分场景中,我们的F1分数和精确率分别高达约72%和82%。混淆矩阵和Grad-CAM热图的可视化结果进一步验证了模型对不同类别的识别能力。为全面评估模型性能,我们将其与其他用于多标签图像分类任务的先进(SOTA)方法进行比较,并进行了一系列消融实验。实验结果表明,MMTSC模型在F1分数、精确率、召回率和平均精度均值(mAP)方面优于其他SOTA方法。此外,我们还将模型的骨干网络DenseNet121与EfficientNet-B0、ConvNeXt-Tiny、ResNet-18、MobileNetV3和RegNetX-800MF的经典结构进行比较。评估结果表明,DenseNet121架构在此任务中表现最佳,验证了其作为骨干网络的有效性和适应性。最后,我们将基于深度学习的多标签树种分类模型的结果用于生物量估计,为相关机构提供实用建议,从而为森林资源的科学管理和碳固存能力的提高做出贡献。