热带森林群落特征描述:利用随机森林算法将光谱、物候、结构数据集结合起来

IF 3 2区 环境科学与生态学 Q1 BIODIVERSITY CONSERVATION
Jayant Singhal, Ankur Rajwadi, Guljar Malek, Padamnabhi S. Nagar, G. Rajashekar, C. Sudhakar Reddy, S. K. Srivastav
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引用次数: 0

摘要

自卫星遥感技术问世以来,森林特征描述一直是其主要应用之一。在群落层面描述森林特征对于生物多样性的保护、恢复和可持续管理至关重要。遥感技术的最新进展不仅提供了从太空观测森林反射光谱的机会,还提供了观测森林物候和结构的机会。在这项研究中,地球观测(EO)数据集被分为三组:光谱组、结构组和物候组。然后,将随机森林(RF)算法与基于实地调查的树木数据一起应用于这 3 个数据集,生成印度古吉拉特邦 Purna 野生动物保护区的群落分类图。光谱数据集的分类准确率(79.08%-87.23%)优于物候数据集(80.94%);而物候数据集的分类准确率又优于结构数据集(74.11%-81.49%)。结合三个数据集最佳预测因子的射频模型将分类准确率提高到 90.29%。就光谱数据集而言,夏季季风季节开始前的最后一幅图像的准确率最高。此外,相对较新的卫星首次提供的新光谱波段对模型的贡献明显高于遥感卫星已提供一段时间的较老光谱波段。总之,这项研究通过提高现成遥感数据集的准确性,为绘制热带树木群落图建立了一个经验框架,并可通过充足的实地清查数据进行升级,以生成印度国家级森林树木群落图。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Characterization of tropical forests at community level: combining spectral, phenological, structural datasets using random forest algorithm

Since the inception of satellite remote sensing as a technology, characterization of forests has been one of its major applications. Characterization of forests at community level is essential for conservation, restoration and sustainable management of biodiversity. Recent advances in remote sensing offer opportunities to observe not only the reflectance spectra of forests from space, but also their phenology and structure. In this study, Earth Observation (EO) datasets were divided into 3 sets: spectral, structural and phenological. Then, Random Forest (RF) algorithm was applied on these 3 datasets along with field inventory-based tree data to generate community classification map of Purna wildlife sanctuary in Gujarat, India. The classification accuracy achieved from the spectral datasets (79.08–87.23%) was better than the phenological dataset (80.94%); and the latter in turn was better than the structural datasets (74.11–81.49%). An RF model with combination of the best predictors from the three datasets increased the classification accuracy upto 90.29%. In case of spectral dataset, the last image before the start of summer monsoon season gave the best accuracy. Also the new spectral bands which first became available in relatively newer satellites contributed significantly more to the model as compared to relatively older spectral bands which have been available in remote sensing satellites for quite some time. Overall, this study develops an empirical framework for mapping tropical tree communities by improving accuracy across the readily available remote sensing datasets and can be upscaled with sufficient field inventory data to generate a national level forest tree community map in India.

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来源期刊
Biodiversity and Conservation
Biodiversity and Conservation 环境科学-环境科学
CiteScore
6.20
自引率
5.90%
发文量
153
审稿时长
9-18 weeks
期刊介绍: Biodiversity and Conservation is an international journal that publishes articles on all aspects of biological diversity-its description, analysis and conservation, and its controlled rational use by humankind. The scope of Biodiversity and Conservation is wide and multidisciplinary, and embraces all life-forms. The journal presents research papers, as well as editorials, comments and research notes on biodiversity and conservation, and contributions dealing with the practicalities of conservation management, economic, social and political issues. The journal provides a forum for examining conflicts between sustainable development and human dependence on biodiversity in agriculture, environmental management and biotechnology, and encourages contributions from developing countries to promote broad global perspectives on matters of biodiversity and conservation.
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