Irving Hernández-Gómez, C. Cerdán, A. Navarro-Martínez, D. Vázquez-Luna, Samaria Armenta-Montero, E. Ellis
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引用次数: 6
Abstract
Detecting and monitoring forest disturbance from selective logging is necessary to develop effective strategies and polices that conserve tropical forests and mitigate climate change. We assessed the potential of using the remote sensing tool, CLASlite forest monitoring system, to detect disturbance from timber harvesting in four community forests () of the Selva Maya on the Yucatan Peninsula, Mexico. Selective logging impacts (e.g. felling gaps, skid trails, logging roads and log landings) were mapped using GPS in the 2014 annual cutting areas (ACAs) of each ejido. We processed and analyzed two pre-harvest Landsat images (2001 and 2013) and one post-harvest image (November 2014) with the CLASlite system, producing maps of degraded, deforested and unlogged areas in each ACA. Based on reference points of disturbed (felling and skidding), deforested (log landings and roads) and unlogged areas in each ACA, we applied accuracy assessments which showed very low overall accuracies (<19.1%). Selective logging impacts, mainly from log landings and new logging road construction, were detected in only one ejido which had the highest logging intensity (7 m ha).ejidos3â1
检测和监测选择性采伐对森林的干扰对于制定有效的战略和政策以保护热带森林和减缓气候变化是必要的。我们评估了利用遥感工具CLASlite森林监测系统在墨西哥尤卡坦半岛的四个塞尔瓦玛雅社区森林()中检测木材采伐干扰的潜力。利用GPS在每个采伐岛的2014年年度采伐区(ACAs)绘制了选择性采伐影响(如采伐间隙、滑轨、采伐道路和采伐点)。我们使用CLASlite系统处理和分析了两张收获前的Landsat图像(2001年和2013年)和一张收获后的图像(2014年11月),生成了每个ACA中退化、森林砍伐和未砍伐地区的地图。基于每个ACA中受干扰(砍伐和打滑)、毁林(原木着陆和道路)和未砍伐区域的参考点,我们进行了精度评估,结果显示总体精度非常低(<19.1%)。只有一个采伐强度最高的采伐岛(7 m ha)发现了选择性采伐影响,主要来自于伐木着陆和新采伐道路的建设
期刊介绍:
Silva Fennica publishes significant new knowledge on forest sciences. The scope covers research on forestry and forest ecosystems. Silva Fennica aims to increase understanding on forest ecosystems, and sustainable use and conservation of forest resources. Use of forest resources includes all aspects of forestry containing biomass-based and non-timber products, economic and social factors etc.