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Woody cover assessments in a Southern African savanna, using hyper-temporal C-band ASAR-WS data

机译:使用超时C波段ASAR-WS数据对南部非洲大草原进行木质覆盖评估

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Southern African savanna ecosystems and their woody resources are under pressure. Governments in the region need locally calibrated, cost effective, and regularly updated information on these resources in order to satisfy both national and international commitments to manage them. Using LiDAR data as a calibration dataset, this paper sets out to investigate the potential of hypertemporal C-band ASAR SAR data in mapping woody structural related parameters in a savanna environment. Images spanning three years where grouped by years (2007–2009), season (Wet or Dry) and polarization (HH or VV), and relationships were sought for the woody parameter total canopy cover (TCC). Results show that: Dry season combinations of images outperformed wet season images; HH co-polarised images outperformed VV images; temporally filtered images showed marked improvement on unfiltered images. While non-parametric random forest models achieved better validation accuracies than other models did. The single best result was achieved by combining all the temporally filtered images, from all of the various scenarios (R=0.74; RMSE=8.52; SEP=35.27). The results show promise in delivering regional scale, locally calibrated, baseline products for the management of Southern Africa's woody resources.
机译:南部非洲大草原生态系统及其木本资源面临压力。该地区的政府需要有关这些资源的本地校准,具有成本效益和定期更新的信息,以便满足管理这些资源的国家和国际承诺。本文使用LiDAR数据作为校准数据集,着手研究超时空C波段ASAR SAR数据在稀树草原环境中映射木质结构相关参数的潜力。搜寻了按年份(2007-2009),季节(湿或干)和极化(HH或VV)分组的三年图像,并寻找了木质参数总冠层覆盖率(TCC)的关系。结果表明:干旱季节的图像组合优于潮湿季节的图像; HH共极化图像优于VV图像;时间过滤的图像显示出未过滤图像的显着改善。尽管非参数随机森林模型比其他模型具有更好的验证准确性。通过组合来自所有各种场景的所有经过时间滤波的图像(R = 0.74; RMSE = 8.52; SEP = 35.27),获得了单个最佳结果。结果表明,有望为南部非洲的木本资源管理提供区域规模的,经过本地校准的基准产品。

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