首页> 外文会议>2018 IEEE International Congress on Big Data >Treepedia 2.0: Applying Deep Learning for Large-Scale Quantification of Urban Tree Cover
【24h】

Treepedia 2.0: Applying Deep Learning for Large-Scale Quantification of Urban Tree Cover

机译:Treepedia 2.0:将深度学习应用于城市树木覆盖物的大规模量化

获取原文
获取原文并翻译 | 示例

摘要

Recent advances in deep learning have made it possible to quantify urban metrics at fine resolution, and over large extents using street-level images. Here, we focus on measuring urban tree cover using Google Street View (GSV) images. First, we provide a small-scale labelled validation dataset and propose standard metrics to compare the performance of automated estimations of street tree cover using GSV. We apply state-of-the-art deep learning models, and compare their performance to a previously established benchmark of an unsupervised method. Our training procedure for deep learning models is novel; we utilize the abundance of openly available and similarly labelled street-level image datasets to pre-train our model. We then perform additional training on a small training dataset consisting of GSV images. We find that deep learning models significantly outperform the unsupervised benchmark method. Our semantic segmentation model increased mean intersection-over-union (IoU) from 44.10% to 60.42% relative to the unsupervised method and our end-to-end model decreased Mean Absolute Error from 10.04% to 4.67%. We also employ a recently developed method called gradient-weighted class activation map (Grad-CAM) to interpret the features learned by the end-to-end model. This technique confirms that the end-to-end model has accurately learned to identify tree cover area as key features for predicting percentage tree cover. Our paper provides an example of applying advanced deep learning techniques on a large-scale, geo-tagged and image-based dataset to efficiently estimate important urban metrics. The results demonstrate that deep learning models are highly accurate, can be interpretable, and can also be efficient in terms of data-labelling effort and computational resources.
机译:深度学习的最新进展使得使用街道级图像在很大程度上以高分辨率对城市度量进行量化成为可能。在这里,我们重点介绍使用Google Street View(GSV)图像测量城市树木的覆盖率。首先,我们提供了一个小规模的带标签的验证数据集,并提出了标准度量标准,以比较使用GSV进行的街道树覆盖率自动估算的效果。我们应用最先进的深度学习模型,并将其性能与以前建立的无监督方法基准进行比较。我们的深度学习模型训练程序很新颖;我们利用大量公开可用的和类似标签的街道级图像数据集来对模型进行预训练。然后,我们在由GSV图像组成的小型训练数据集上执行其他训练。我们发现深度学习模型明显优于无监督基准方法。相对于无监督方法,我们的语义分割模型将平均工会联合会(IoU)从44.10%增加到60.42%,而我们的端到端模型将平均绝对误差从10.04%减少到4.67%。我们还采用了最近开发的称为梯度加权类激活图(Grad-CAM)的方法来解释由端到端模型学习的功能。该技术证实端到端模型已准确学习了将树覆盖面积识别为预测树覆盖百分比的关键特征。我们的论文提供了一个在大规模的,带有地理标签的,基于图像的数据集上应用高级深度学习技术以有效估计重要城市指标的示例。结果表明,深度学习模型是高度准确的,可解释的,并且在数据标注工作量和计算资源方面也很有效。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号