论文标题
基于深度学习的自动化森林健康诊断
Deep Learning based Automated Forest Health Diagnosis from Aerial Images
论文作者
论文摘要
全球气候变化对我们的环境产生了巨大影响。先前的研究表明,全球气候变化发生的害虫灾难可能导致大量树木死亡,它们不可避免地成为森林大火的因素。森林大火的重要前景是森林的状况。基于空中图像的森林分析可以使枯树和活树的早期发现。在本文中,我们应用了一种合成方法来扩大图像数据集并使用经过转移学习方案的重新训练的蒙版RCNN(基于掩码区域的卷积神经网络)的新框架,用于从空中图像中自动化死树检测。我们将框架应用于航空影像数据集,并比较八个微调模型。这些模型中最好的平均平均精度得分(MAP)达到54%。自动检测之后,我们能够自动生产和计算死树口罩的数量,以图像中的枯树标记,作为森林健康状况的指标,可以与环境变化的因果分析和森林火灾的预测可能性有关。
Global climate change has had a drastic impact on our environment. Previous study showed that pest disaster occured from global climate change may cause a tremendous number of trees died and they inevitably became a factor of forest fire. An important portent of the forest fire is the condition of forests. Aerial image-based forest analysis can give an early detection of dead trees and living trees. In this paper, we applied a synthetic method to enlarge imagery dataset and present a new framework for automated dead tree detection from aerial images using a re-trained Mask RCNN (Mask Region-based Convolutional Neural Network) approach, with a transfer learning scheme. We apply our framework to our aerial imagery datasets,and compare eight fine-tuned models. The mean average precision score (mAP) for the best of these models reaches 54%. Following the automated detection, we are able to automatically produce and calculate number of dead tree masks to label the dead trees in an image, as an indicator of forest health that could be linked to the causal analysis of environmental changes and the predictive likelihood of forest fire.