Refining National Forest Cover Data Based on Fusion Optical Satellite Imageries in Indonesia

Q2 Agricultural and Biological Sciences International Journal of Forestry Research Pub Date : 2023-08-17 DOI:10.1155/2023/7970664
Ogy Dwi Aulia, Isnenti Apriani, Andi Juanda, Mufti Fathul Barri, R. W. Dewi, Fauzan Nafis Muharam, Bryandanu Oktanine, Theresia Bernadette Phoa, A. A. Condro
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Abstract

Precision mapping towards tropical forest cover data is critical to address the global climate crisis, such as land-based carbon measurement and potential conservation areas identification. In the recent decade, accessibility to open public datasets on forestry is rapidly increased. However, the availability of finer-resolution of forest cover data is still very limited. As a developing country with numerous rainforests, Indonesia suffered multifaceted threats, particularly deforestation. Thus, precise forest cover data can be useful to fulfill Indonesia’s nationally determined contribution to climate change. In this study, we mapped the national forest cover data for Indonesia using a new object-based image classification approach based on combined Planet-NICFI and Sentinel-2 optical imageries. Our findings had relatively high accuracy compared with the other studies, with the F score ranging from 0.67 to 0.99 and can capture the fragmented forest in fine resolution (i.e., ∼5 m). In addition, we found that Planet-NICFI bands had a higher contribution in predicting forest cover than Sentinel-2 imageries. Utilizing forest cover data for further analyses should be performed to help the achievement of national and global agenda, e.g., related to the FOLU net sink in 2030 and the Global Biodiversity Framework.
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基于融合光学卫星图像的印尼国家森林覆盖率数据精炼
对热带森林覆盖数据进行精确测绘对于解决全球气候危机至关重要,例如陆地碳测量和潜在保护区的确定。近十年来,开放的公共林业数据集的可访问性迅速增加。然而,获得更精细分辨率的森林覆盖数据仍然非常有限。作为一个拥有众多热带雨林的发展中国家,印度尼西亚遭受了多方面的威胁,特别是森林砍伐。因此,精确的森林覆盖数据可用于实现印度尼西亚对气候变化的国家自主贡献。在这项研究中,我们使用基于Planet-NICFI和Sentinel-2光学图像组合的新的基于物体的图像分类方法绘制了印度尼西亚的国家森林覆盖数据。与其他研究相比,我们的研究结果具有相对较高的精度,F值在0.67 ~ 0.99之间,可以以精细分辨率(即~ 5 m)捕获破碎森林。此外,我们发现Planet-NICFI波段在预测森林覆盖方面比Sentinel-2图像有更高的贡献。应利用森林覆盖数据进行进一步分析,以帮助实现国家和全球议程,例如与2030年FOLU净汇和全球生物多样性框架有关的议程。
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来源期刊
International Journal of Forestry Research
International Journal of Forestry Research Agricultural and Biological Sciences-Forestry
CiteScore
2.70
自引率
0.00%
发文量
32
审稿时长
18 weeks
期刊介绍: International Journal of Forestry Research is a peer-reviewed, Open Access journal that publishes original research and review articles focusing on the management and conservation of trees or forests. The journal will consider articles looking at areas such as tree biodiversity, sustainability, and habitat protection, as well as social and economic aspects of forestry. Other topics covered include landscape protection, productive capacity, and forest health.
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