1972 至 2024 年 L 波段合成孔径雷达及其在森林参数估计中的应用:综述

Plants Pub Date : 2024-09-07 DOI:10.3390/plants13172511
Zilin Ye, Jiangping Long, Tingchen Zhang, Bingbing Lin, Hui Lin
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引用次数: 0

摘要

光学遥感可有效捕捉二维(2D)森林信息,如林地面积和森林覆盖率。然而,利用光学图像准确估算森林垂直结构相关参数(如高度)仍然具有挑战性,这导致估算生物量和碳储量等森林储量的准确性较低。因此,准确获取森林垂直结构信息已成为光学遥感应用于林业的一个重要瓶颈。微波遥感,如合成孔径雷达(SAR)和偏振 SAR,具有 L 波段信号穿透林冠的能力,尤其擅长捕捉森林的垂直结构信息,是克服上述限制的另一种理想遥感数据源。本文利用 Citexs 数据分析平台以及 CNKI 和 PubMed 数据库,研究了将 L 波段合成孔径雷达技术应用于森林冠层穿透和结构参数估计的进展,并基于 PubMed 数据库中 1978 年至 2024 年的 58 篇相关文章进行了全面综述。论文利用年度发表数量、发表论文的国家/地区、机构和第一作者等指标以及可视化结果来确定发展趋势。本文总结了 L 波段合成孔径雷达在估算森林高度、湿度和森林蓄积量方面的技术水平和有效性,还研究了 L 波段在森林中的穿透深度,并强调了关键的影响因素。本综述指出了现有的局限性,并提出了未来的研究方向以及使用 L 波段合成孔径雷达技术进行森林参数估计的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
L-Band Synthetic Aperture Radar and Its Application for Forest Parameter Estimation, 1972 to 2024: A Review
Optical remote sensing can effectively capture 2-dimensional (2D) forest information, such as woodland area and percentage forest cover. However, accurately estimating forest vertical-structure relevant parameters such as height using optical images remains challenging, which leads to low accuracy of estimating forest stocks like biomass and carbon stocks. Thus, accurately obtaining vertical structure information of forests has become a significant bottleneck in the application of optical remote sensing to forestry. Microwave remote sensing such as synthetic aperture radar (SAR) and polarimetric SAR provides the capability to penetrate forest canopies with the L-band signal, and is particularly adept at capturing the vertical structure information of forests, which is an alternative ideal remote-sensing data source to overcome the aforementioned limitation. This paper utilizes the Citexs data analysis platform, along with the CNKI and PubMed databases, to investigate the advancements of applying L-band SAR technology to forest canopy penetration and structure-parameter estimation, and provides a comprehensive review based on 58 relevant articles from 1978 to 2024 in the PubMed database. The metrics, including annual publication numbers, countries/regions from which the publications come, institutions, and first authors, with the visualization of results, were utilized to identify development trends. The paper summarizes the state of the art and effectiveness of L-band SAR in addressing the estimation of forest height, moisture, and forest stocks, and also examines the penetration depth of the L-band in forests and highlights key influencing factors. This review identifies existing limitations and suggests research directions in the future and the potential of using L-band SAR technology for forest parameter estimation.
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