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A review of forward modelling and retrieval approaches for forest soil moisture and vegetation optical depth using L-band radiometry 森林土壤水分和植被光学深度的l波段辐射正演模拟与反演方法综述
IF 11.4 1区 地球科学 Q1 ENVIRONMENTAL SCIENCES Pub Date : 2025-12-15 DOI: 10.1016/j.rse.2025.115158
Andreas Colliander , Mike Schwank , Yiwen Zhou , Mehmet Kurum , Cristina Vittucci , Leung Tsang , Alex Roy , Aaron Berg
Forests are a critical component of the Earth system, accounting for approximately one-third of global photosynthetic activity and carbon storage. They also provide essential habitats for countless species and vital resources for human activities. Low-frequency (L-band; 1–2 GHz) microwave radiometry enables the measurement of forest soil moisture (SM) and L-band vegetation optical depth (L-VOD), offering valuable insights into processes such as tree growth, water infiltration, soil fertility, fuel moisture, carbon stocks, wildfire vulnerability, and biodiversity dynamics. These measurements also support the study of carbon and water fluxes, tree responses to hydrological stress (e.g., drought), and fuel moisture estimation. However, existing algorithms for retrieving SM and L-VOD were primarily developed for low-biomass vegetation types (e.g., grasslands and croplands), differing structurally from forests. This motivates the present review to evaluate the current retrieval approaches, their performance assessment methods, and available validation resources. The review found that systematic uncertainties persist in forest retrievals, despite the demonstrated sensitivity of L-band brightness temperature (TB) to forest SM and L-VOD. Moreover, the focus on non-forest ecosystems has led to a lack of suitable ground truth and reference data for validating forest SM and L-VOD products, and current validation techniques remain underdeveloped. To fully harness the potential of L-band radiometry in forest monitoring, new retrieval algorithms that account for the unique structural and compositional characteristics of forests are required. Additionally, validation efforts must be enhanced both quantitatively and qualitatively—particularly for L-VOD—to improve confidence in these remote sensing products.
森林是地球系统的重要组成部分,约占全球光合作用活动和碳储量的三分之一。它们还为无数物种提供了重要的栖息地和人类活动的重要资源。低频(l波段;1-2 GHz)微波辐射测量能够测量森林土壤水分(SM)和l波段植被光学深度(L-VOD),为树木生长、水分渗透、土壤肥力、燃料水分、碳储量、野火脆弱性和生物多样性动态等过程提供有价值的见解。这些测量还支持对碳和水通量、树木对水文压力(如干旱)的反应以及燃料水分估算的研究。然而,现有的SM和L-VOD检索算法主要是针对低生物量植被类型(如草地和农田)开发的,在结构上与森林不同。这促使本综述对当前的检索方法、它们的性能评估方法和可用的验证资源进行评估。研究发现,尽管l波段亮度温度(TB)对森林SM和L-VOD具有敏感性,但森林反演的系统不确定性仍然存在。此外,对非森林生态系统的关注导致缺乏适合森林SM和L-VOD产品验证的地面真值和参考数据,目前的验证技术仍不发达。为了充分利用l波段辐射测量在森林监测中的潜力,需要考虑到森林独特结构和组成特征的新检索算法。此外,必须加强定量和定性的验证工作,特别是l - vod,以提高对这些遥感产品的信心。
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引用次数: 0
Highest quality remote sensing reflectance database compiled from 20+ years of MODIS-aqua measurements 从20多年的MODIS-aqua测量中编译的最高质量的遥感反射率数据库
IF 11.4 1区 地球科学 Q1 ENVIRONMENTAL SCIENCES Pub Date : 2025-12-13 DOI: 10.1016/j.rse.2025.115195
Longteng Zhao, Zhongping Lee, Xiaolong Yu, Tianhao Wang, Daosheng Wang, Shaoling Shang
Remote sensing reflectance (Rrs) is a fundamental property in satellite ocean color remote sensing, which is critical for retrieving optical-biogeochemical properties and data-driven atmospheric correction algorithms. In this study, with three criteria applicable to ∼91% of the global ocean, we compiled a database of the highest quality Rrs (HQMODISA-Rrs) of oceanic waters based on 20+ years of ocean color measurements by the Moderate Resolution Imaging Spectroradiometer (MODIS) onboard the Aqua satellite. While removing a large number of daily “standard” data products, our evaluation showed that the criteria for the highest-quality Rrs (CHQR) improved MODIS Rrs data consistency with benchmark in situ Rrs datasets, such as those from MOBY and AERONET-OC. After applying CHQR, analysis of imagery products in the South Pacific Ocean revealed that the coefficient of variation (CV) of Rrs among pixels reduced from 0.042 (standard quality control) to 0.030, along with enhanced temporal consistency, which indicates that this approach effectively filters abnormal data products. While such a dataset played a key role in the development of the cross-satellite atmospheric correction algorithm (Lee et al., 2024), we here further demonstrate that applications of HQMODISA-Rrs have ∼21.0% of oceanic areas between 50°S and 50°N showing reversed long-term trends of Rrs compared to the trend based on the standard Rrs product. We anticipate that this highest-quality Rrs database would not only improve our evaluation and understanding of long-term changes in various Rrs-derivative bio-optical properties of the global ocean, but also help to obtain consistent products among various satellite ocean color missions.
遥感反射率(Rrs)是卫星海洋颜色遥感的一项基本属性,它对于检索光学-生物地球化学属性和数据驱动的大气校正算法至关重要。在这项研究中,根据适用于全球海洋约91%的三个标准,我们基于Aqua卫星上的中分辨率成像光谱仪(MODIS) 20多年的海洋颜色测量数据,编制了一个最高质量的海水Rrs数据库(HQMODISA-Rrs)。在删除大量日常“标准”数据产品的同时,我们的评估表明,最高质量Rrs (CHQR)标准提高了MODIS Rrs数据与基准原位Rrs数据集(如MOBY和AERONET-OC)的一致性。应用CHQR后,对南太平洋地区影像产品的分析表明,像素间rrr的变异系数(CV)从0.042(标准质量控制)降至0.030,且时间一致性增强,表明该方法能够有效过滤异常数据产品。虽然这样的数据集在跨卫星大气校正算法的发展中发挥了关键作用(Lee et al., 2024),但我们在这里进一步证明,与基于标准Rrs产品的趋势相比,HQMODISA-Rrs的应用在50°S和50°N之间的海洋区域中显示出相反的Rrs长期趋势。我们预计,这个最高质量的Rrs数据库不仅可以提高我们对全球海洋各种Rrs衍生生物光学特性长期变化的评估和理解,而且还有助于在各种卫星海洋颜色任务中获得一致的产品。
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引用次数: 0
Retrieval of global surface phytoplankton community structure using a minimal set of predictors 基于最小预测因子的全球表层浮游植物群落结构检索
IF 11.4 1区 地球科学 Q1 ENVIRONMENTAL SCIENCES Pub Date : 2025-12-13 DOI: 10.1016/j.rse.2025.115174
Xueyin Li , Shuguo Chen , Junwei Wang , Qing Zhu
Phytoplankton underpin marine food webs and drive essential biogeochemical processes. Their pigment composition serves as a vital indicator of community structure and physiological state. In this study, we developed a multilayer perceptron (MLP)-based model to estimate the concentrations of 26 pigments and infer phytoplankton community structure in global surface waters. By integrating prior knowledge and quantifying through SHapley Additive exPlanations (SHAP), we selected a physically meaningful subset of 10 input features to construct pigment inversion models, including environmental parameters such as sea surface temperature (SST), salinity (SSS), and sea surface height (SSH), as well as remote sensing reflectance (Rrs) at seven spectral bands. For 24 pigments, the model achieved high predictive accuracy and strong generalization performance, with an average coefficient of determination (R2) of 0.76 and median absolute percentage difference (MAPD) of 12.01 % under random cross-validation, and slightly lower accuracy under temporal cross-validation (R2 = 0.67; MAPD = 14.35 %). Feature analysis revealed that Rrs, particularly spectral regions encompassing absorption peaks and adjacent gradients, dominated pigment predictions. Moreover, the model captured nonlinear thermal responses of phytoplankton to SST, consistent with known ecophysiological patterns, and reflected synergistic interactions between SST and SSS affecting pigment variability. The inferred phytoplankton community structures, estimated via Diagnostic Pigment Analysis (DPA), showed strong agreement with previous studies, validating the model's ecological reliability. Additionally, Hydrolight simulations based on in situ aph spectra demonstrated that the model performs reliably under water conditions with suspended particulate matter (SPM) ≤ 1 g m−3 and colored dissolved organic matter (CDOM) absorption at 440 nm is ≤0.25 m−1, maintaining MAPD below 25 %. Our research demonstrates that neural networks operate in a physically informed manner rather than as purely data-driven models, enabling them to represent complex interactions between phytoplankton and ecological environment. This underscores the necessity of designing ecologically informed and physically interpretable input features in remote sensing applications, offering valuable guidance for future biogeochemical modeling efforts.
浮游植物支撑着海洋食物网,驱动着重要的生物地球化学过程。它们的色素组成是群落结构和生理状态的重要指标。在这项研究中,我们建立了一个基于多层感知器(MLP)的模型来估计26种色素的浓度,并推断全球地表水浮游植物的群落结构。通过整合先验知识并通过SHapley加性解释(SHAP)进行量化,我们选择了10个具有物理意义的输入特征子集来构建色素反演模型,包括环境参数,如海面温度(SST)、盐度(SSS)、海面高度(SSH),以及7个光谱波段的遥感反射率(Rrs)。对于24种色素,该模型具有较高的预测准确率和较强的泛化性能,随机交叉验证的平均决定系数(R2)为0.76,中位数绝对百分比差(MAPD)为12.01%,时间交叉验证的准确率略低(R2 = 0.67, MAPD = 14.35%)。特征分析表明,Rrs,特别是包含吸收峰和相邻梯度的光谱区域,主导了色素预测。此外,该模型捕获了浮游植物对海温的非线性热响应,与已知的生态生理模式一致,并反映了海温和海温之间影响色素变异的协同相互作用。通过诊断色素分析(DPA)推测的浮游植物群落结构与先前的研究结果非常吻合,验证了该模型的生态可靠性。此外,基于原位aph光谱的水光模拟表明,该模型在悬浮颗粒物(SPM)≤1 g m−3、彩色溶解有机质(CDOM)在440 nm吸收≤0.25 m−1的水条件下运行可靠,MAPD保持在25%以下。我们的研究表明,神经网络以物理知情的方式运作,而不是纯粹的数据驱动模型,使它们能够代表浮游植物与生态环境之间复杂的相互作用。这强调了在遥感应用中设计生态信息和物理可解释的输入特征的必要性,为未来的生物地球化学建模工作提供了有价值的指导。
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引用次数: 0
Long-term forest structure trends in the peninsular Spain from lidar-optical sensors synergies 从激光雷达-光学传感器协同效应看西班牙半岛森林结构的长期趋势
IF 11.4 1区 地球科学 Q1 ENVIRONMENTAL SCIENCES Pub Date : 2025-12-13 DOI: 10.1016/j.rse.2025.115196
M. Tanase , J.P. Martini , P. Miranda , D. Garcia , V. Wilke , S. Miguel , C. Mihai , J. Diez , S. Natal , D. San Martin , P. Ruiz-Benito
Information on forest structure is needed for many management aspects, from carbon stock evaluation to fire hazard prediction. Such information is increasingly available from remote sensing data, including light detection and ranging (lidar) sensors. However, continuous forest monitoring is hindered by the limited temporal availability of lidar acquisitions. This study focused on integrating temporally consistent optical acquisitions with temporally sparse lidar acquisitions to provide long term information on forest structural characteristics across the peninsular Spain. We evaluated different modeling approaches including machine learning and advanced deep learning models to ascertain their limitations for long-term forest monitoring. Subsequently, annual estimates of forest structural attributes were generated from 1985 to 2024. Across all forests, height (H), canopy cover (FCC), and above ground biomass (AGB) increased by 34 %, 29 % and respectively 17.5 % from the first (1985–1989) to the last lustrum (2019–2024). By biome, the increase in H, FCC and AGB was larger over the Mediterranean (35 %, 33 %, and 18 % respectively) when compared to the Atlantic (33 %, 10 %, and 15 % respectively) forests. For the model training year, deep learning models improved estimation accuracy by 27 ± 2.6 % (mean value across regions and variables) when compared to machine learning models. However, when applied to data from other years (temporal inference), model precision was similar except for height in the Mediterranean were deep learning models improved RMSE estimates by 7 %. Overall, the deep learning models presented significant computational drawbacks when applied to large geographic extents and extensive temporal ranges, substantially increasing both training and prediction times without providing a clear improvement in accuracy compared to machine learning across years. Therefore, the long-term forest database was generated using machine learning models. This database provides a spatially explicit understanding of forest structural changes over nearly four decades, offering a valuable resource for forest management, ecological assessments, and climate-related policy-making.
从碳储量评价到火险预测,森林结构信息在许多管理方面都是需要的。这些信息越来越多地来自遥感数据,包括光探测和测距(激光雷达)传感器。然而,持续的森林监测受到激光雷达获取的有限时间可用性的阻碍。本研究的重点是整合时间一致的光学采集与时间稀疏的激光雷达采集,以提供关于整个西班牙半岛森林结构特征的长期信息。我们评估了不同的建模方法,包括机器学习和高级深度学习模型,以确定它们在长期森林监测中的局限性。随后,从1985年到2024年,对森林结构属性进行了年度估算。所有森林的高度(H)、冠层盖度(FCC)和地上生物量(AGB)从第一季(1985-1989年)到末季(2019-2024年)分别增加了34%、29%和17.5%。从生物群系来看,地中海森林的H、FCC和AGB分别增加了35%、33%和18%,而大西洋森林的H、FCC和AGB分别增加了33%、10%和15%。在模型训练年,与机器学习模型相比,深度学习模型的估计精度提高了27±2.6%(跨区域和变量的平均值)。然而,当应用于其他年份的数据(时间推断)时,模型精度相似,除了地中海的高度,深度学习模型将RMSE估计提高了7%。总的来说,深度学习模型在应用于大地理范围和大时间范围时存在显著的计算缺陷,与机器学习相比,深度学习模型大大增加了训练和预测时间,但在准确性方面却没有明显的提高。因此,使用机器学习模型生成长期森林数据库。该数据库提供了近40年来森林结构变化的空间明确理解,为森林管理、生态评估和气候相关决策提供了宝贵的资源。
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引用次数: 0
Temporal attention multi-resolution fusion of satellite image time-series, applied to Landsat-8/9 and Sentinel-2: all bands, any time, at best spatial resolution 应用于Landsat-8/9和Sentinel-2的卫星图像时间序列时间关注多分辨率融合:所有波段、任何时间、最佳空间分辨率
IF 11.4 1区 地球科学 Q1 ENVIRONMENTAL SCIENCES Pub Date : 2025-12-11 DOI: 10.1016/j.rse.2025.115159
Julien Michel, Jordi Inglada
This paper introduces a general formulation for the fusion of Satellite Image Time Series (SITS) of variable length from several sensors at different spatial resolutions and acquisition times over the same geographical area. In this formulation, all the spectral bands from all the input sensors are predicted at the best input spatial resolution, and at any observed or non-observed acquisition time requested. To address this general problem, an advanced Masked Auto-Encoder training strategy is proposed, utilising two new loss functions: a Linear-Regression Learned Perceptual Image Similarity term to favor high spatial frequency details, and a mask-contrastive term to ignore clouds and other non-informative areas in the input data. This strategy is applied to the training of Temporal Attention Multi-Resolution Fusion of Satellite Image Time-Series (TAMRF-SITS), a novel Deep Learning architecture designed to implement the proposed general formulation. Experiments with joint Landsat-8/9 and Sentinel-2 time-series were conducted on four different tasks from the literature and demonstrate that a single pre-trained TAMRF is on par with or better than existing ad-hoc methods. For instance, TAMRF provides a gain of 0.01 surface reflectance Root Mean Square Error on a Spatio-Temporal Fusion task when compared to competing algorithms, while showing the highest spatial frequency content. Moreover, the proposed method relaxes unrealistic assumptions routinely found in the literature, including: same or similar spectral bands in different sensors, same-day acquisitions, and scale-invariance of the relationship between high and low resolution images. To the best of our knowledge, our method is the first to achieve this range of capabilities with a single model, without making any of these assumptions. The complete source code for training and experiments is available here: https://github.com/Evoland-Land-Monitoring-Evolution/tamrfsits.
本文介绍了同一地理区域内不同空间分辨率、不同采集时间、不同传感器的变长卫星图像时间序列融合的一般公式。在该公式中,所有输入传感器的所有光谱带都是在最佳输入空间分辨率下预测的,并且在任何观测或非观测的采集时间都是如此。为了解决这个普遍问题,提出了一种先进的掩模自编码器训练策略,利用两个新的损失函数:线性回归学习感知图像相似性项,以支持高空间频率细节,掩模对比项,以忽略输入数据中的云和其他非信息区域。该策略应用于卫星图像时间序列时间注意力多分辨率融合(tamrf - sit)的训练,这是一种新的深度学习架构,旨在实现所提出的通用公式。利用联合Landsat-8/9和Sentinel-2时间序列对文献中的四种不同任务进行了实验,并证明单个预训练的TAMRF与现有的ad-hoc方法相当或更好。例如,与竞争算法相比,TAMRF在时空融合任务中提供了0.01的表面反射率均方根误差,同时显示了最高的空间频率内容。此外,所提出的方法放宽了文献中常见的不切实际的假设,包括:不同传感器的相同或相似的光谱带,同一天采集,以及高低分辨率图像之间关系的尺度不变性。据我们所知,我们的方法是第一个用单个模型实现这个范围的功能,而不做任何这些假设。完整的训练和实验源代码可在这里获得:https://github.com/Evoland-Land-Monitoring-Evolution/tamrfsits。
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引用次数: 0
Began+: Leveraging bi-temporal SAR-optical data fusion to reconstruct clear-sky satellite imagery under large cloud cover 开始+:利用双时相sar -光学数据融合重建大云量下的晴空卫星图像
IF 11.4 1区 地球科学 Q1 ENVIRONMENTAL SCIENCES Pub Date : 2025-12-11 DOI: 10.1016/j.rse.2025.115171
Yu Xia , Wei He , Liangpei Zhang , Hongyan Zhang
In recent years, optical remote sensing imagery has played an increasingly vital role in Earth observation, but cloud contamination exists as an inevitable degradation. Combining synthetic aperture radar (SAR) and optical data with machine learning offers a promising solution for reconstructing clear-sky satellite imagery. Nevertheless, several challenges persist, including insufficient attention to large cloud cover, difficulties in restoring temporal changes, and limited practicality of deep models. To address these issues, this paper introduces a novel deep learning-based cloud removal framework, termed Began+, which integrates bi-temporal SAR-optical data to deal with cloudy images with high cover ratios. The Began+ framework comprises two primary components: a deep network and a flexible post-processing step, combining the strengths of data-driven models for restoring change information and traditional gap-filling algorithms for mitigating radiance discrepancies. First, a bi-output enhanced generative adversarial network, abbreviated as Began, is designed for image synthesis, featuring an enhanced channel-wise fusion block (ECFB) and a multi-scale depth-wise convolution residual block (MDRB). By applying the dual-tasking optimization and co-learning strategy, the Began model identifies potential change areas from bi-temporal SAR and pre-temporal optical inputs, guiding the synthesis of target optical images. Second, a range of cloud masking and gap-filling techniques can be optionally employed to effectively reduce radiometric discrepancies between the synthesized images and the cloudy data, ultimately yielding high-quality, clear-sky imagery. To meet the big data requirements of deep learning, we constructed two globally distributed cloud removal datasets, named BiS1L8-CR and BiS1S2-CR. Supported by these datasets, extensive experiments demonstrated that the Began+ framework effectively captures bi-temporal change features, reconstructing precise surface information in both Landsat-8 and Sentinel-2 satellite images under large cloud cover. Compared to the latest solutions and algorithms, our proposed Began+ framework exhibits significant advantages from both qualitative and quantitative perspectives in both simulated and real experiments. Furthermore, without strict constraints on input timing, the Began+ framework enables accurate reconstruction of large-scale dual-sensor imagery under high-ratio cloud cover, effectively restoring changing surfaces and improving the quality of unsupervised vegetation extraction.
近年来,光学遥感影像在对地观测中发挥着越来越重要的作用,但云污染的存在是不可避免的。将合成孔径雷达(SAR)和光学数据与机器学习相结合,为重建晴空卫星图像提供了一种很有前途的解决方案。然而,一些挑战仍然存在,包括对大云量的关注不足,恢复时间变化的困难,以及深度模型的实用性有限。为了解决这些问题,本文引入了一种新的基于深度学习的云去除框架,称为begin +,它集成了双时相sar光学数据来处理高覆盖率的多云图像。begin +框架包括两个主要组成部分:深度网络和灵活的后处理步骤,结合了数据驱动模型的优势,用于恢复变化信息和传统的空白填充算法,以减轻亮度差异。首先,设计了一个双输出增强生成对抗网络(简称Began)用于图像合成,具有增强的通道智能融合块(ECFB)和多尺度深度智能卷积残差块(MDRB)。该模型通过双任务优化和共同学习策略,从双时相SAR和前时相光学输入中识别出潜在的变化区域,指导目标光学图像的合成。其次,可以选择性地采用一系列云掩蔽和间隙填充技术来有效地减少合成图像与云数据之间的辐射差异,最终产生高质量的晴空图像。为了满足深度学习的大数据需求,我们构建了两个全球分布式的去云数据集,分别命名为BiS1L8-CR和BiS1S2-CR。在这些数据集的支持下,大量的实验表明,Began+框架有效地捕获了双时相变化特征,在大云量下重建了Landsat-8和Sentinel-2卫星图像中的精确地表信息。与最新的解决方案和算法相比,我们提出的begin +框架在模拟和真实实验中从定性和定量的角度都表现出显著的优势。此外,在没有严格限制输入时间的情况下,begin +框架能够在高云量下精确重建大尺度双传感器图像,有效地恢复变化的地表,提高无监督植被提取的质量。
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引用次数: 0
Estimation of sea surface foam coverage and effective foam layer thickness from satellite microwave measurements 卫星微波测量估算海面泡沫覆盖和有效泡沫层厚度
IF 11.4 1区 地球科学 Q1 ENVIRONMENTAL SCIENCES Pub Date : 2025-12-11 DOI: 10.1016/j.rse.2025.115176
Xuchen Jin , Xianqiang He , Palanisamy Shanmugam , Yan Bai , Jianyun Ying , Qiankun Zhu , Yaqi Zhao , Delu Pan
Sea surface foam commonly represents the accumulation of bubbles on the sea surface caused by breaking waves and plays a critical role in the air-sea interaction process and climate research. Both foam coverage and foam layer thickness have a profound effect on sea surface emissivity for moderate to high wind speeds due to the high emissivity of foam at microwave bands. However, there is a lack of models to estimate sea foam layer thickness due to the limited experimental data and constrained empirical formulations. To address this limitation, we propose a dual-channel (L- and Ka-bands) method that utilizes passive microwave satellite measurements to estimate sea surface foam coverage and effective foam layer thickness over the global ocean. This method uses microwave measurements from the Aquarius/SAC-D and Soil Moisture Active Passive (SMAP) missions, together with observations from the WindSat instrument, to convert the top-of-atmosphere (TOA) brightness temperature (TB) to sea surface TBs and then isolate the foam-induced emission component. Because sea surface emissivity is sensitive to foam distributions, a foam emissivity model was developed and implemented to derive the foam layer parameters (coverage and thickness) as functions of wind speed. The retrieved foam coverage shows strong agreement with independent observations, with root mean square differences (RMSDs) of 0.87 % against field measurements and 0.38 % against satellite data. In addition, the retrieved effective foam thickness also shows close consistency with hydrodynamic model expectations. The global distributions of foam coverage and effective layer thickness were further retrieved and analyzed in this study, which demonstrated high potential of the proposed models compared to the previous methods and suggested that the combined use of L- band and Ka-band measurements from a single platform could improve the accuracy of foam coverage and effective layer thickness over the global ocean.
海面泡沫通常代表着破碎波浪在海面上造成的气泡积聚,在海气相互作用过程和气候研究中起着至关重要的作用。由于泡沫在微波波段的高发射率,因此泡沫覆盖面积和泡沫层厚度对中至高风速下的海面发射率都有深远的影响。然而,由于实验数据的限制和经验公式的约束,目前还缺乏估算海泡沫层厚度的模型。为了解决这一限制,我们提出了一种双通道(L和ka波段)方法,利用被动微波卫星测量来估计全球海洋的海面泡沫覆盖率和有效泡沫层厚度。该方法利用来自Aquarius/SAC-D和土壤湿度主动式被动(SMAP)任务的微波测量数据,以及来自WindSat仪器的观测数据,将大气顶(TOA)亮度温度(TB)转换为海面温度,然后分离泡沫诱发发射分量。由于海面发射率对泡沫分布很敏感,建立并实现了泡沫发射率模型,推导了泡沫层参数(覆盖面积和厚度)随风速的变化规律。回收的泡沫覆盖度与独立观测值非常吻合,与现场测量值的均方根差(rmsd)为0.87%,与卫星数据的均方根差(rmsd)为0.38%。此外,回收的有效泡沫厚度也显示出与水动力模型预期的密切一致性。本研究对全球泡沫覆盖率和有效层厚度的分布进行了进一步的反演和分析,结果表明,与以往的方法相比,所提出的模型具有很高的潜力,并表明在单一平台上联合使用L波段和ka波段测量可以提高全球海洋泡沫覆盖率和有效层厚度的精度。
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引用次数: 0
A novel UAV lidar-derived shrub structural index for estimating above-ground biomass 基于无人机激光雷达的灌木结构指数估算地上生物量
IF 11.4 1区 地球科学 Q1 ENVIRONMENTAL SCIENCES Pub Date : 2025-12-10 DOI: 10.1016/j.rse.2025.115189
Jiaming Wu , Yaxin Wang , Liang Hong , Bin Sun , Zhenping He , Zejiang Li , Zhijie Ma
Precise estimation of shrub above-ground biomass (AGB) in arid regions is crucial for carbon cycle research and ecosystem assessment. Unmanned aerial vehicle (UAV) -borne light detection and ranging (LiDAR) has become a key tool for quantifying three-dimensional vegetation structure and estimating AGB. However, the short stature of arid zone vegetation, combined with sparse and low-quality point clouds acquired by UAV, limits high-accuracy shrub AGB estimation. To address this issue, this study selected Caragana korshinskii, a typical psammophytic shrub in Ordos City, as the research object. By integrating UAV-based multispectral and LiDAR data, a biomass estimation method based on a novel Shrub Structure Index (SSI) was proposed. The SSI workflow reconstructs the three-dimensional shrub structure under sparse point cloud conditions and improves AGB estimation accuracy. This workflow comprises Object-based image analysis (OBIA) classification for individual shrub extraction, Delaunay linear up-sampling, voxel-based partitioning, and dynamic stratification by height percentiles. Experimental results demonstrate that: (1) The individual shrub extraction method utilizing the large-scale mean shift (LSMS) segmentation algorithm and support vector machine (SVM) classification achieved a total quadrat segmentation accuracy of over 90.61 %, an overall classification accuracy of 91.51 % (Kappa = 0.86). (2) In SSI construction, the height-percentile stratification thickness, point-cloud sampling, and voxel edge length together set Caragana korshinskii stratification accuracy and density scale; the 5 % height percentile interval, a sampling size of 100 points, and 0.04 m voxel edge length proved optimal. (3) Comparative experiments showed that the three-dimensional feature integrated SSI significantly outperformed single-feature, two-feature, traditional allometric equation, and random forest (RF) models, with the SSI-based model achieving R2, RMSE, MAE, and rRMSE of 0.90, 529.01 g, 432.58 g, and 26.54 %, respectively. These results indicate that SSI more effectively captures shrub spatial structure and improves AGB prediction under sparse UAV-LiDAR conditions.
干旱区灌木地上生物量的精确估算对碳循环研究和生态系统评价具有重要意义。无人机(UAV)机载光探测与测距(LiDAR)已成为三维植被结构量化和AGB估计的关键工具。然而,干旱区植被矮小,加之无人机获取的点云稀疏、质量不高,限制了灌木AGB的高精度估算。为解决这一问题,本研究以鄂尔多斯市典型沙生灌木柠条为研究对象。结合无人机多光谱数据和激光雷达数据,提出了一种基于灌木结构指数(SSI)的生物量估算方法。SSI工作流重建了稀疏点云条件下的三维灌木结构,提高了AGB估计精度。该工作流包括基于对象的图像分析(OBIA)分类,用于单个灌木提取,Delaunay线性上采样,基于体素的分区,以及根据高度百分位数进行动态分层。实验结果表明:(1)采用大规模均值移位(large-scale mean shift, LSMS)分割算法和支持向量机(support vector machine, SVM)分类的灌木单株提取方法,总样方分割准确率达到90.61%以上,总体分类准确率达到91.51% (Kappa = 0.86)。(2)在SSI构建中,高百分位分层厚度、点云采样和体素边缘长度共同确定柠条分层精度和密度尺度;5%的高度百分位数间隔、100个点的采样大小和0.04 m体素边缘长度证明是最优的。(3)对比实验表明,三维特征集成SSI显著优于单特征、双特征、传统异速生长方程和随机森林(RF)模型,基于SSI的模型R2、RMSE、MAE和rRMSE分别为0.90、529.01 g、432.58 g和26.54%。这些结果表明,在稀疏的无人机-激光雷达条件下,SSI能更有效地捕捉灌木的空间结构,提高AGB的预测精度。
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引用次数: 0
Edge effects on forest dynamics in China from 2000 to 2020: Evidence from satellite remote sensing 2000 - 2020年中国森林动态的边缘效应:来自卫星遥感的证据
IF 11.4 1区 地球科学 Q1 ENVIRONMENTAL SCIENCES Pub Date : 2025-12-09 DOI: 10.1016/j.rse.2025.115187
Jinlong Chen, Zeng Cui, Zhiyao Tang
In the 21st century, forest edge-to-interior gradients have exhibited remarkable spatiotemporal variation in China. In this study, we employed a high-resolution framework integrating NDVI, tree cover, canopy height, and forest age to evaluate edge effects on forest growth, structure, and maturity in China from 2000 to 2020. The results revealed that (1) the proportion of forest edges within 60 m declined from 38 % (653,000 km2 out of 1,694,000 km2) in 2000 to 33 % (680,000 km2 out of 2,033,000 km2) in 2020, accompanied by an increase in interior forests (>300 m) from 22 % (381,000 km2) to 29 % (590,000 km2); (2) NDVI, tree cover, canopy height and forest age increased from the forest edge toward the interior, with the strongest effects occurring within 300 m of the edge and detectable up to 1.2 km into the interior. However, the edge forests demonstrated faster temporal increases in NDVI and tree cover; and (3) these effects varied with the land cover types adjacent to the edge. Specifically, NDVI (0.862) and tree cover (81.17 %) peaked at cropland edges and were lowest at grassland edges (0.793 and 41.24 %), while canopy height ranged from 9.77 m at grassland edges to 12.76 m at waterbody edges. These findings are valuable for advancing forest restoration, mitigating fragmentation, and enhancing natural carbon storage potential in China.
21世纪以来,中国森林边缘-内部梯度呈现出显著的时空变化特征。在本研究中,我们采用整合NDVI、树木覆盖、冠层高度和林龄的高分辨率框架来评估2000 - 2020年中国森林生长、结构和成熟度的边缘效应。结果表明:(1)60 m范围内的森林边缘面积比例从2000年的38%(1694万平方公里中的65.3万平方公里)下降到2020年的33%(203.3万平方公里中的68万平方公里),与此同时,内陆森林面积(300 m)从22%(38.1万平方公里)增加到29%(59万平方公里);(2) NDVI、树盖度、林冠高度和林龄由林缘向林内增加,其中林缘300 m以内的影响最强,向林内1.2 km范围内均可探测到。边缘林的NDVI和树盖度随时间的增加较快;(3)这些效应随边缘附近土地覆被类型的不同而不同。其中,NDVI(0.862)和树盖度在农田边缘最高(81.17%),在草地边缘最低(0.793和41.24%),冠层高度在草地边缘的9.77 m到水体边缘的12.76 m之间。这些发现对于促进中国森林恢复、缓解破碎化和提高自然碳储量潜力具有重要的参考价值。
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引用次数: 0
Performance assessment of canopy gap fraction retrieval using multiple airborne LiDAR instrument configurations 基于机载激光雷达多仪器配置的冠层间隙率反演性能评估
IF 11.4 1区 地球科学 Q1 ENVIRONMENTAL SCIENCES Pub Date : 2025-12-09 DOI: 10.1016/j.rse.2025.115166
Yi Li , Hao Tang , Shanshan Wei , Donghui Xie , Xihan Mu , Guangjian Yan
Canopy gap fraction (GF) is one of the most important vegetation structure parameters widely used in forest ecology and meteorology. Small-footprint airborne LiDAR has gained great popularity for canopy GF retrieval in the past decade; yet most studies were carried out at individual sites using different commercial-off-the-shelf instruments, often ignoring possible inconsistency due to the use of different instruments or scanning configurations. This study aims to provide an assessment of the performance of canopy GF retrieval from small-footprint airborne LiDAR under different collection scenarios. We utilized small-footprint airborne LiDAR data and field digital hemispherical photo (DHP) measurements from the National Ecological Observatory Network (NEON), encompassing 30 sites across 16 eco-regions in the United States from 2016 to 2022. A total of eight baseline cases together with different instrument configurations were included in this analysis. LiDAR-based canopy GF was first retrieved using established methods and then compared to a total of 4596 DHPs from 383 plots. Results show that all instruments could reach an accuracy better than 10 % RMSE under a proper configuration, however, the difference of using waveforms and point clouds alone could reach an RMSE up to 18 %. Scan angle showed the greatest impact among all sensor related parameters and could lead to a mean bias up to 5 %. Interestingly, waveforms did not always outperform point clouds, likely due either to the varying pulse shape of transmitted waveform or to low digitizer performance. In sum, our results caution the use of airborne LiDAR as the only means for validating large-scale satellite vegetation structure products or monitoring subtle long-term canopy changes. Assessing both instrument and acquisition specifications can help minimize potential bias in canopy GF retrieval over different ecosystems.
林冠间隙分数(GF)是森林生态学和气象学中广泛应用的重要植被结构参数之一。近十年来,小足迹机载激光雷达在canopy GF检索方面获得了广泛的应用;然而,大多数研究是在个别地点使用不同的商用现成仪器进行的,往往忽略了由于使用不同仪器或扫描配置而可能产生的不一致。本研究旨在评估小足迹机载激光雷达在不同采集场景下的冠层GF检索性能。我们利用来自国家生态观测站网络(NEON)的小足迹机载激光雷达数据和现场数字半球形照片(DHP)测量结果,包括2016年至2022年美国16个生态区的30个站点。共有8例基线病例以及不同的仪器配置被纳入本分析。首先利用已建立的方法检索基于lidar的冠层GF,然后与来自383个样地的4596个dhp进行比较。结果表明,在适当的配置下,所有仪器的测量精度均可达到10%以上的均方根误差(RMSE),而单独使用波形和点云的误差可达到18%以上。扫描角度在所有传感器相关参数中显示出最大的影响,并可能导致平均偏差高达5%。有趣的是,波形并不总是优于点云,可能是由于传输波形的脉冲形状不同或数字化仪性能较低。总之,我们的研究结果提醒使用机载激光雷达作为验证大规模卫星植被结构产品或监测细微的长期冠层变化的唯一手段。评估仪器和采集规格有助于减少在不同生态系统中冠层GF检索的潜在偏差。
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Remote Sensing of Environment
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