余付蓉, 高峻, 付晶. 基于腾讯街景的林地郁闭度提取方法研究[J]. 西南林业大学学报, 2018, 38(5): 139-144. DOI: 10.11929/j.issn.2095-1914.2018.05.022
引用本文: 余付蓉, 高峻, 付晶. 基于腾讯街景的林地郁闭度提取方法研究[J]. 西南林业大学学报, 2018, 38(5): 139-144. DOI: 10.11929/j.issn.2095-1914.2018.05.022
Furong Yu, Jun Gao, Jing Fu. Extraction Methods of Forest Canopy Closure Based on Tencent Street View[J]. Journal of Southwest Forestry University, 2018, 38(5): 139-144. DOI: 10.11929/j.issn.2095-1914.2018.05.022
Citation: Furong Yu, Jun Gao, Jing Fu. Extraction Methods of Forest Canopy Closure Based on Tencent Street View[J]. Journal of Southwest Forestry University, 2018, 38(5): 139-144. DOI: 10.11929/j.issn.2095-1914.2018.05.022

基于腾讯街景的林地郁闭度提取方法研究

Extraction Methods of Forest Canopy Closure Based on Tencent Street View

  • 摘要: 从腾讯街景中提取全景图像集,通过图像拼接技术将圆柱形全景图转换成方位角鱼眼图像,结合图像增强、图像二值化等数字图像处理技术以提取上海市植物园林地的郁闭度,把提取结果与通过非监督分类法计算得出的郁闭度以及实地勘测的郁闭度进行比较,以验证该方法的可行性和准确性。结果表明:腾讯街景法的绝对误差平均值(0.027)和标准差(0.031)均小于非监督分类法的,说明腾讯街景法的绝对误差离散程度小、相对稳定。腾讯街景法的R2为0.977,RMSE为0.054,为较优的估测方法。腾讯街景法的拟合线斜率为0.952,表明腾讯街景法的整体估测值偏小;而非监督分类法的拟合线斜率为1.013,则表明非监督分类法的整体估测值偏大。

     

    Abstract: The study extracted the panoramic image set from Tencent Street View, transformed the cylindrical panorama into azimuth fish-eye image through image mosaic technology, and combined image enhancement, image binarization and other digital image processing techniques to extract the canopy closure of forest in Shanghai Botanical Garden. The extraction results were compared with the canopy closure calculated by the unsupervised classification method and the canopy closure of the field surveys to verify the feasibility and accuracy of the method. The results show that the absolute error mean (0.027) and standard deviation (0.031) of Tencent Street View method are smaller than the unsupervised classification method, which indicates that the absolute error dispersion of Tencent Street View method is small and relatively stable. The R2 of Tencent Street View is 0.977, and the RMSE is 0.054, which indicates that Tencent Street View is a better estimation method. The slope of the fitted line of Tencent Street View is 0.952, which indicates that the overall estimated value of Tencent Street View is smaller; the slope of the fitted line of unsupervised classification method is 1.013, indicating that the overall estimated value of unsupervised classification method is larger.

     

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