Remotely piloted aircraft imagery for automatic tree counting in forest restoration areas: a case study in the Amazon

IF 1.3 Q3 REMOTE SENSING
R. W. Albuquerque, M. Costa, M. E. Ferreira, G. Carrero, C. Grohmann
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引用次数: 5

Abstract

Throughout the world, restoration of degraded areas (RDA) is not only a global but also a local challenge. In this context, the Brazilian government committed itself to restore 12 million hectares of forests by 2030. RDA monitoring customarily depends on extensive fieldwork to collect data on all individuals planted. As remotely piloted aircrafts (RPAs) can reduce costs and time of fieldwork activities, studying this technology is therefore timely given. A crucial metric for RDA is the number of trees established in the area. Methods using RPAs on automatic tree counting showed good accuracy using algorithms based on the canopy height model (CHM), which is the difference between a digital surface model (DSM) and a digital terrain model (DTM). However, obtaining a DTM demands an extra computational processing step and may require field control points or manually delimiting objects on the surface. The study presented here proposes and evaluates a semi-automated methodology for counting trees directly on DSM in RDAs in the Amazon using RPA coupled with a red–green–blue standard photographic sensor. The DSM method obtained good overall accuracy and F-score indexes, superior to the CHM method for all study areas even when overall accuracy was low for both methods.
用于森林恢复地区树木自动计数的遥控飞机图像:以亚马逊为例
在世界各地,退化地区的恢复不仅是一个全球性的挑战,也是一个地方性的挑战。在这方面,巴西政府承诺到2030年恢复1200万公顷森林。RDA监测通常依赖于广泛的实地调查来收集所有种植个体的数据。由于遥控飞机(RPA)可以减少实地调查活动的成本和时间,因此研究这项技术是及时的。RDA的一个关键指标是该地区的树木数量。使用RPA进行树木自动计数的方法显示,使用基于冠层高度模型(CHM)的算法具有良好的准确性,这是数字地表模型(DSM)和数字地形模型(DTM)之间的区别。然而,获得DTM需要额外的计算处理步骤,并且可能需要现场控制点或手动界定表面上的对象。本文提出并评估了一种半自动化方法,该方法使用RPA和红-绿-蓝标准摄影传感器,直接在亚马逊RDA的DSM上计数树木。DSM方法获得了良好的总体准确度和F评分指数,在所有研究领域都优于CHM方法,即使这两种方法的总体准确率都很低。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
5.30
自引率
0.00%
发文量
2
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