five

<b>Characterizing dynamics of building height in China from 2005 to 2020 based on GEDI, Landsat, and PALSAR data</b>|城市化数据集|建筑物高度数据集

收藏
DataCite Commons2024-08-28 更新2024-09-03 收录
城市化
建筑物高度
下载链接:
https://figshare.com/articles/dataset/_b_Characterizing_dynamics_of_building_height_in_China_from_2005_to_2020_based_on_GEDI_Landsat_and_PALSAR_data_b_/26840626
下载链接
链接失效反馈
资源简介:
The unprecedented urbanization in China has driven rapid urban and rural development in recent decades. While existing studies have extensively focused on horizontal urban expansion, research on vertical urban expansion patterns in China remains limited. To address this gap, we proposed a Multi-Temporal Building Height estimation network (MTBH-Net) to estimate building heights at a 30 m spatial resolution in China for 2005, 2010, 2015, and 2020 by integrating Global Ecosystem Dynamics Investigation (GEDI), Landsat, and PALSAR data. Specifically, we introduced sample migration to generate reference building height data and utilized the Continuous Change Detection and Classification (CCDC) disturbance feature to ensure consistency in unchanged built-up areas. Validation with GEDI L2A V2 data demonstrated that MTBH-Net achieved RMSEs of 5.38 m, 5.73 m, 6.26 m, and 6.36 m for the respective years. Further validation with field-measured data and GF-7 building height data yielded RMSEs of 9.13 m and 10.99 m, respectively. The proposed 30-m China Multi-Temporal Building Height (CMTBH-30) dataset reveals an increase in average building heights in China from 10.48 m in 2005 to 11.37 m in 2020, reflecting an upward trend in urban development. Additionally, the standard deviation of building heights rose from 3.87 m in 2005 to 6.35 m in 2020, indicating increased height variation nationwide. Regional analysis from 2005 to 2020 shows significant vertical growth on stable impervious surfaces in Chongqing (+3.6 m), Guizhou (+3.0 m), and Qinghai (+3.0 m), while Macau (+14.9 m), Hong Kong (+13.9 m), and Guangdong (+13.5 m) experienced notable growth on newly expanded impervious surfaces. Minimal growth was observed in Jilin, Heilongjiang, and Xinjiang. CMTBH-30 offers a more refined and accurate depiction of building heights, effectively capturing height variations and mitigating the underestimation of high-rise buildings. It fills the gap in multi-temporal building height products. Overall, this study provides a new dimension for urban research and is valuable for urban planning, disaster management, and environmental sustainability.
提供机构:
figshare
创建时间:
2024-08-27
用户留言
有没有相关的论文或文献参考?
这个数据集是基于什么背景创建的?
数据集的作者是谁?
能帮我联系到这个数据集的作者吗?
这个数据集如何下载?
点击留言
数据主题
具身智能
数据集  4098个
机构  8个
大模型
数据集  439个
机构  10个
无人机
数据集  37个
机构  6个
指令微调
数据集  36个
机构  6个
蛋白质结构
数据集  50个
机构  8个
空间智能
数据集  21个
机构  5个
5,000+
优质数据集
54 个
任务类型
进入经典数据集
热门数据集

Yahoo Finance

Dataset About finance related to stock market

kaggle 收录

CMAB

CMAB数据集由清华大学创建,是中国首个全国范围的多属性建筑数据集,涵盖了3667个自然城市,总面积达213亿平方米。该数据集通过集成多源数据,如高分辨率Google Earth影像和街景图像,生成了建筑的屋顶、高度、功能、年龄和质量等属性。数据集的创建过程结合了地理人工智能框架和机器学习模型,确保了数据的高准确性。CMAB数据集主要应用于城市规划和可持续发展研究,旨在提供详细的城市3D物理和社会结构信息,支持城市化进程和政府决策。

arXiv 收录

UniMed

UniMed是一个大规模、开源的多模态医学数据集,包含超过530万张图像-文本对,涵盖六种不同的医学成像模态:X射线、CT、MRI、超声、病理学和眼底。该数据集通过利用大型语言模型(LLMs)将特定模态的分类数据集转换为图像-文本格式,并结合现有的医学领域的图像-文本数据,以促进可扩展的视觉语言模型(VLM)预训练。

github 收录

OpenSonarDatasets

OpenSonarDatasets是一个致力于整合开放源代码声纳数据集的仓库,旨在为水下研究和开发提供便利。该仓库鼓励研究人员扩展当前的数据集集合,以增加开放源代码声纳数据集的可见性,并提供一个更容易查找和比较数据集的方式。

github 收录

DIV2K

DIV2K数据集分为: 列车数据: 从800高清高分辨率图像开始,我们获得相应的低分辨率图像,并为2、3和4个降尺度因子提供高分辨率和低分辨率图像 验证数据: 100高清晰度高分辨率图像用于生成低分辨率对应图像,低分辨率从挑战开始提供,并用于参与者从验证服务器获得在线反馈; 当挑战的最后阶段开始时,高分辨率图像将被释放。 测试数据: 100多样的图像用于生成低分辨率的相应图像; 参与者将在最终评估阶段开始时收到低分辨率图像,并在挑战结束并确定获胜者后宣布结果。

OpenDataLab 收录