利用Sentinel-2图像检测和表征山前森林采伐:一种方法建议

S. Petris, R. Berretti, Elisa Guiot, F. Giannetti, R. Motta, E. Borgogno-Mondino
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引用次数: 6

摘要

这项研究评估了Sentinel-2(S2)作为皮埃蒙特地区森林采伐早期检测和评估工具的有效性,该工具可供地区森林管理局使用。优先事项是在区域范围内检测年度森林覆盖变化,目标如下:一绘制不规则(就区域林业条例而言)森林砍伐的地图;ii)量化造林干预的强度。预计结果将支持森林警察的控制。所提出的过程基于基于随机森林算法的监督分类方法。收割面积检测的准确度证明很高(总体准确度98%)。通过计算采伐后归一化差异植被指数(NDVI)的局部变异系数,获得了发生森林砍伐的特征,这表明它是森林采伐强度的良好预测指标。
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Detection And Characterization of Forest Harvesting In Piedmont Through Sentinel-2 Imagery: A Methodological Proposal
This study evaluated the effectiveness of Sentinel-2 (S2) as a tool for early detection and estimation of forest harvesting in the Piemonte Region, which can be used by the regional forest administration. The priority was the detection, at the regional scale, of annual forest cover changes with the following goals: i) mapping of irregular (in respect of the regional Forestry Regulation) forest cuts; ii) quantification of the intensity of the silvicultural interventions. Results are expected to support forest police controls. The proposed procedure is based on a supervised classification approach based on Random Forest algorithm. Accuracy of harvested areas detection proved to be high (overall accuracy 98%). Characterization of the occurred forest cuts was obtained computingthe local coefficient of variationof the normalized difference vegetation index (NDVI) after harvesting, that showed to be a good predictor of forest harvesting intensity.
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来源期刊
Annals of Silvicultural Research
Annals of Silvicultural Research Agricultural and Biological Sciences-Forestry
CiteScore
2.70
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0.00%
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