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Airborne thermal infrared hyperspectral image temperature and emissivity retrieval based on inter-channel correlated automatic atmospheric compensation and TES 基于信道间相关自动大气补偿和 TES 的机载热红外高光谱图像温度和发射率检索
IF 11.1 1区 地球科学 Q1 ENVIRONMENTAL SCIENCES Pub Date : 2024-09-11 DOI: 10.1016/j.rse.2024.114410
Du Wang , Li-Qin Cao , Lyu-Zhou Gao , Yan-Fei Zhong

Land Surface Temperature (LST) and Land Surface Emissivity (LSE) are key properties of natural materials essential for scientific analysis. Existing retrieval techniques, however, impede the automatic retrieval of LST and LSE across various observational contexts due to the frequent unavailability of in-situ atmospheric data or blackbody references for atmospheric compensation. To address this, we propose the Inter-Channel Correlated Automatic Atmospheric Compensation (ICCAAC) method, seamlessly integrated with the ASTER-TES approach, enabling direct retrieval of LST and LSE from at-sensor radiance without prerequisite atmosphere and land surface information. ICCAAC innovatively models the inter-channel relationships among atmospheric constituents to streamline the Radiative Transfer Equation (RTE), which includes the transmittance reconstruction with neighboring channels and the atmospheric upwelling radiance simplification with the atmospheric vertical characteristics, tackling the complex challenge of retrieving ground-leaving radiance. Coupled with ASTER-TES and under the LSE smoothness constraint, along with a lookup table for atmospheric downwelling radiance, this method facilitates accurate LST and LSE retrieval. In controlled simulations, ICCAAC shows a maximum brightness temperature error of 1.6 K for Water Vapor Content (WVC) under 1.5 g/cm2. A spectral sensitivity analysis suggests the optimal performance of ICCAAC for full width at half maximum (FWHM) range extending beyond the channel interval. Applied to real-world airborne data from Hypercam-LW and HyTES, ICCAAC-TES validates its accuracy with an LST and LSE error margin of 1.2 K and 0.014, respectively, corroborated by seventeen distinct ground validations in Hypercam-LW imagery. Comparative analysis with five varied HyTES observation scenes reveals an LST discrepancy of around 1.2 K and notable emissivity textures in LSE images, particularly in mineral terrains. These outcomes underscore the efficacy of ICCAAC-TES, advocating its suitability for automated LST and LSE retrieval in airborne survey applications.

陆地表面温度(LST)和陆地表面发射率(LSE)是科学分析所必需的自然材料的关键属性。然而,由于经常无法获得原位大气数据或用于大气补偿的黑体基准,现有的检索技术阻碍了在各种观测环境中自动检索 LST 和 LSE。为解决这一问题,我们提出了信道间相关自动大气补偿(ICCAAC)方法,该方法与 ASTER-TES 方法无缝集成,无需大气和地表信息的先决条件,即可从传感器辐射率直接检索 LST 和 LSE。ICCAAC 创新性地模拟了大气成分之间的信道间关系,简化了辐射传输方程 (RTE),其中包括与相邻信道的透射率重建和与大气垂直特征的大气上涌辐射度简化,从而解决了检索离地辐射度的复杂难题。该方法与 ASTER-TES 相结合,在 LSE 平滑性约束条件下,加上大气下沉辐射度的查找表,有助于精确地检索 LST 和 LSE。在受控模拟中,ICCAAC 显示水汽含量 (WVC) 低于 1.5 g/cm2 时的最大亮度温度误差为 1.6 K。光谱灵敏度分析表明,ICCAAC 在半最大全宽(FWHM)范围超出信道间隔时具有最佳性能。将 ICCAAC-TES 应用于来自 Hypercam-LW 和 HyTES 的实际机载数据时,ICCAAC-TES 验证了其准确性,LST 和 LSE 误差范围分别为 1.2 K 和 0.014,Hypercam-LW 图像中 17 次不同的地面验证证实了这一点。与五个不同的 HyTES 观测场景进行的对比分析表明,LST 误差约为 1.2 K,LSE 图像中的发射率纹理明显,尤其是在矿物地形中。这些结果突出表明了 ICCAAC-TES 的功效,证明其适用于机载勘测应用中的 LST 和 LSE 自动检索。
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引用次数: 0
Automatic extraction of glacial lakes from Landsat imagery using deep learning across the Third Pole region 利用深度学习从大地遥感卫星图像中自动提取第三极地区的冰川湖泊
IF 11.1 1区 地球科学 Q1 ENVIRONMENTAL SCIENCES Pub Date : 2024-09-11 DOI: 10.1016/j.rse.2024.114413
Qian Tang , Guoqing Zhang , Tandong Yao , Marc Wieland , Lin Liu , Saurabh Kaushik

The Tibetan Plateau and surroundings, commonly referred to as the Third Pole region, has the largest ice store outside the Arctic and Antarctic regions. Glacial lakes in the Third Pole region are expanding rapidly as glaciers thin and retreat. The Landsat satellite series is the most popular for mapping glacial lakes, benefiting from long-term archived data and suitable spatial resolution (30 m since ∼1990). However, the homogeneous mapping of high-quality, large-scale, and multi-temporal glacial lake inventories using Landsat imagery relies heavily on visual inspection and manual editing due to mountain shadows, wet ice, frozen lakes, and snow cover on lake boundaries, which is time consuming and labour-intensive. Deep learning methods have been applied to glacial lake extraction in the Third Pole and other regions, yet these methods are either concentrated on small test sites without large-scale applications or in polar regions. In this study, several classical deep convolutional neural networks were evaluated, and the DeepLabv3+ with Mobilenetv3 backbone performed best, with a high accuracy of mean intersection over union (mIoU) of 94.8 % and a low loss error of 0.4 %. The proposed method demonstrated robustness in challenging conditions such as mountain shadows, frozen or partially frozen lakes, wet ice and river contact, all without requiring extensive manual correction. Compared with manual delineation, the model's prediction has a precision rate of 86 %, recall rate of 85 %, and F1-score of 85 %. The area extracted by the model shows a strong correlation with the manual delineation (r2 = 0.97, slope = 0.94) and a high intersection over union (IoU > 0.8) of the predicted areas. A test of large-scale glacial lake mapping based on the developed automated model in 2020 across the Third Pole region shows the robust performance with 29,429 glacial lakes larger than 0.0054 km2 with a total area of ∼1779.9 km2 (including non-glacier-fed lakes). The model trained in this study can be fine-tuned for large-scale mapping of glacial lakes in other mountain regions worldwide.

青藏高原及其周边地区通常被称为 "第三极地区",是北极和南极地区之外最大的冰库。随着冰川的减薄和后退,第三极地区的冰川湖泊正在迅速扩大。Landsat 卫星系列得益于长期存档数据和合适的空间分辨率(1990 年以来为 30 米),是最常用的冰川湖泊测绘工具。然而,由于湖泊边界上的山影、湿冰、冰冻湖泊和积雪覆盖,利用 Landsat 图像绘制高质量、大尺度和多时相冰川湖泊清单的同质地图在很大程度上依赖于目测和人工编辑,这既耗时又耗力。深度学习方法已被应用于第三极和其他地区的冰川湖泊提取,但这些方法要么集中在没有大规模应用的小型试验场,要么集中在极地地区。在这项研究中,对几种经典的深度卷积神经网络进行了评估,采用 Mobilenetv3 主干网的 DeepLabv3+ 表现最佳,平均交集大于联合(mIoU)的准确率高达 94.8%,损失误差低至 0.4%。在山影、结冰或部分结冰的湖泊、湿冰和河流接触等具有挑战性的条件下,所提出的方法都表现出很强的鲁棒性,而且无需大量人工校正。与人工划界相比,模型预测的精确率为 86%,召回率为 85%,F1 分数为 85%。模型提取的区域与人工划定的区域有很强的相关性(r2 = 0.97,斜率 = 0.94),预测区域的交集大于联合(IoU > 0.8)。基于所开发的自动模型在 2020 年对第三极地区的大尺度冰川湖泊绘图进行了测试,结果表明该模型性能良好,共绘制出 29 429 个面积大于 0.0054 平方公里的冰川湖泊,总面积达 1779.9 平方公里(包括非冰川湖泊)。本研究中训练的模型可进行微调,以用于全球其他山区冰川湖泊的大规模测绘。
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引用次数: 0
Retrieval of moisture content of common Sphagnum peat moss species from hyperspectral and multispectral data 从高光谱和多光谱数据中检索常见泥炭藓物种的水分含量
IF 11.1 1区 地球科学 Q1 ENVIRONMENTAL SCIENCES Pub Date : 2024-09-11 DOI: 10.1016/j.rse.2024.114415
Susanna Karlqvist, Iuliia Burdun, Sini-Selina Salko, Jussi Juola, Miina Rautiainen

Peatlands store enormous amounts of carbon in a peat layer, the formation and preservation of which can only occur under waterlogged conditions. Monitoring peatland moisture conditions is critically important because a decrease in moisture leads to peat oxidation and the release of accumulated carbon back into the atmosphere as a greenhouse gas. Optical remote sensing enables the indirect monitoring of peatland moisture conditions by identifying moisture-driven changes in vegetation spectral signatures. The vegetation of northern peatlands is dominated by Sphagnum mosses, whose spectral signatures are known to be highly sensitive to changes in moisture content. In this study, we tested methods to estimate Sphagnum moisture content from spectral data using seven spectral moisture indices, the OPtical TRApezoid Model (OPTRAM) and the Continuous Wavelet Transform (CWT). This study was based on data representing nine Sphagnum species sampled from two habitats in southern boreal peatlands in Finland. Our results showed that both multi- and hyperspectral data can be used to estimate the moisture content of Sphagnum mosses. Nevertheless, the optimal retrieval method depended on habitat characteristics. Using hyperspectral data, we found that: (i) the CWT exhibited superior performance for all studied moss species (RMarg2= 0.72, ICC = 0.40), (ii) the exponential OPTRAM performed best for the mesotrophic species (RMarg2= 0.70, ICC = 0.08), and (iii) the Modified Moisture Stress Index (MMSI) yielded the best results (RMarg2= 0.68, ICC = 0.55) for the ombrotrophic species. Furthermore, we demonstrated that using multispectral data instead of hyperspectral data provides comparable results in moisture estimation when used as input with OPTRAM or Moisture Stress Index (MSI). This approach could lead to new insights into the moisture dynamics in Sphagnum-dominated peatlands over the span of the multispectral satellite era.

泥炭地在泥炭层中储存了大量的碳,而这些碳只有在积水的条件下才能形成和保存。监测泥炭地的水分状况至关重要,因为水分减少会导致泥炭氧化,并将积累的碳作为温室气体释放回大气中。光学遥感可通过识别植被光谱特征的湿度变化来间接监测泥炭地的湿度状况。北方泥炭地的植被以泥炭藓为主,众所周知,泥炭藓的光谱特征对水分含量的变化高度敏感。在这项研究中,我们测试了利用七种光谱水分指数、OPTRAM(光学梯形模型)和连续小波变换(CWT)从光谱数据估算泥炭藓水分含量的方法。这项研究基于从芬兰南部北方泥炭地的两个栖息地采集的代表九种泥炭藓的数据。研究结果表明,多光谱和高光谱数据都可用于估算泥炭藓的含水量。不过,最佳的检索方法取决于栖息地的特征。通过使用高光谱数据,我们发现(i) CWT 在所有研究的苔藓物种中都表现出卓越的性能(RMarg2= 0.72,ICC = 0.40),(ii) 指数 OPTRAM 在中营养物种中表现最佳(RMarg2= 0.70,ICC = 0.08),(iii) 改良水分压力指数(MMSI)在外养物种中产生了最佳结果(RMarg2= 0.68,ICC = 0.55)。此外,我们还证明了使用多光谱数据而不是高光谱数据作为 OPTRAM 或水分胁迫指数(MSI)的输入时,可提供相似的水分估算结果。在多光谱卫星时代,这种方法可使人们对泥炭藓为主的泥炭地的湿度动态有新的认识。
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引用次数: 0
Land surface temperature retrieval from SDGSAT-1 thermal infrared spectrometer images: Algorithm and validation 从 SDGSAT-1 热红外光谱仪图像中检索地表温度:算法与验证
IF 11.1 1区 地球科学 Q1 ENVIRONMENTAL SCIENCES Pub Date : 2024-09-11 DOI: 10.1016/j.rse.2024.114412
Yuanjian Teng , Huazhong Ren , Yonghong Hu , Changyong Dou

Launched by China in 2021, the Sustainable Development Goals Science Satellite 1 (SDGSAT-1) is the world's first science satellite dedicated to serving the United Nations 2030 Agenda for Sustainable Development Goals. In keeping with international aims of this 2030 agenda, the SDGSAT-1 data will be made available for open accee without any restrictions. The Thermal Infrared Spectrometer (TIS) onboard SDGSAT-1 has three thermal infrared channels with a high spatial resolution of 30 m. This enables precise monitoring of land surface temperature (LST), which is one of the most important variables measured by satellite remote sensing. This paper presents the development and validation of three split-window (SW) algorithms and the temperature and emissivity separation (TES) algorithm for SDGSAT-1 TIS data. These algorithms were rigorously tested through simulation, application, and validation to assess their retrieval accuracy and sensitivity. Simulation results indicate that the theoretical accuracy of the SW algorithms exceeds 1.0 K in most cases, and the TES algorithm shows higher retrieval accuracy with an average LST Root Mean Square Error (RMSE) of 0.60 K. With consideration of the comprehensive effects of instrument noise, land surface emissivity, and atmospheric parameter error, the LST retrieval accuracy of SW algorithms remains better than 1.7 K, and that of the TES algorithm is better than 1.5 K under most conditions. The ground validation utilized site data from the Heihe Integrated Observatory Network and the Surface Radiation budget network. The SW and TES algorithms achieved an accuracy of approximately 1.75 and 1.9 K, respectively. Additionally, a cross-validation based on Moderate Resolution Imaging Spectroradiometer (MODIS) data indicated average RMSDs of approximately 2.25 K for SW algorithms and 3.84 K for TES algorithm. Among the algorithms, the three-channel SW algorithm SW-2 has the best overall performance and is recommended as the LST retrieval method for SDGSAT-1 data. The TES algorithm is also suitable for SDGSAT-1 images because of its ability to retrieve LST and emissivity during both daytime and nighttime.

可持续发展目标科学卫星 1 号(SDGSAT-1)由中国于 2021 年发射,是世界上第一颗专门服务于联合国 2030 年可持续发展目标议程的科学卫星。为了与 2030 年议程的国际目标保持一致,SDGSAT-1 的数据将不受限制地开放获取。SDGSAT-1 上搭载的热红外分光仪(TIS)有三个热红外通道,空间分辨率高达 30 米,能够精确监测陆地表面温度(LST),而陆地表面温度是卫星遥感测量的最重要变量之一。本文介绍了针对 SDGSAT-1 TIS 数据开发和验证的三种分窗口(SW)算法以及温度和发射率分离(TES)算法。通过模拟、应用和验证对这些算法进行了严格测试,以评估其检索精度和灵敏度。模拟结果表明,在大多数情况下,SW 算法的理论精度超过 1.0 K,而 TES 算法显示出更高的检索精度,平均 LST 均方根误差(RMSE)为 0.60 K。考虑到仪器噪声、地表发射率和大气参数误差的综合影响,在大多数条件下,SW 算法的 LST 检索精度仍优于 1.7 K,而 TES 算法的 LST 检索精度优于 1.5 K。地面验证利用了黑河综合观测网和地表辐射预算网的站点数据。SW 和 TES 算法的精度分别达到约 1.75 和 1.9 K。此外,基于中分辨率成像分光仪(MODIS)数据的交叉验证表明,SW 算法的平均 RMSD 约为 2.25 K,TES 算法的平均 RMSD 约为 3.84 K。在这些算法中,三信道 SW 算法 SW-2 的总体性能最佳,建议将其作为 SDGSAT-1 数据的 LST 检索方法。TES 算法也适用于 SDGSAT-1 图像,因为它能够检索白天和夜间的 LST 和发射率。
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引用次数: 0
DRMAT: A multivariate algorithm for detecting breakpoints in multispectral time series DRMAT:在多光谱时间序列中检测断点的多元算法
IF 11.1 1区 地球科学 Q1 ENVIRONMENTAL SCIENCES Pub Date : 2024-09-11 DOI: 10.1016/j.rse.2024.114402
Yang Li , Michael A. Wulder , Zhe Zhu , Jan Verbesselt , Dainius Masiliūnas , Yanlan Liu , Gil Bohrer , Yongyang Cai , Yuyu Zhou , Zhaowei Ding , Kaiguang Zhao

Ecosystem dynamics and ecological disturbances manifest as breakpoints in long-term multispectral remote sensing time series. Typically, these breakpoints are captured using univariate methods applied individually to each band, with subsequent integration of the results. However, multivariate analysis provides a promising way to fully incorporate the multispectral bands into breakpoints detection methods, but it has been rarely applied in monitoring ecosystem dynamics and detecting ecological disturbances. In this research, we developed a multivariate algorithm, named breakpoints-Detection algoRithm using MultivAriate Time series (DRMAT). DRMAT can fully use multispectral bands simultaneously with the consideration of the inter-correlation among bands. It decomposes a multivariate time series into trend, seasonality, and noise, iteratively segmenting the detrended/de-seasonalized signals. We quantitatively evaluated DRMAT using both simulated multivariate data and randomly sampled real-world data, including subtle land cover changes caused by forest disturbances (depletions) and recovery (return of vegetation), as well as subtle changes over a broad range of land cover types. We also qualitatively assessed DRMAT in mapping real-world disturbances. For simulated data with prescribed breakpoints in both trend and seasonality, DRMAT detected breakpoints in trend with an F1 score of 85.5 % and in seasonality with an F1 score of 91.7 %. For real-world data in forested land cover, DRMAT unveiled both disturbances and subsequent recovery with an F1 score of 95.1 % for disturbances and 77.1 % for recovery. It detected disturbances in broader land cover types with an F1 score of 84.0 %. We demonstrated that using all-band data was more accurate than using selected bands in breakpoint detection. The inclusion of vegetation indices as model inputs did not improve accuracy unless the original input bands lacked the specific band information in the vegetation indices. As a multivariate approach, DRMAT leverages the full information in the multispectral data and avoids the necessity of integrating results derived from individual bands.

生态系统动态和生态干扰在长期多光谱遥感时间序列中表现为断点。通常情况下,这些断点是通过对每个波段单独应用单变量方法来捕捉的,然后再对结果进行整合。然而,多变量分析为将多光谱波段完全纳入断点检测方法提供了一种很有前景的方法,但在监测生态系统动态和检测生态干扰方面却很少应用。在这项研究中,我们开发了一种多变量算法,命名为使用多光谱时间序列的断点检测算法(DRMAT)。DRMAT 可以同时充分利用多光谱波段,并考虑波段间的相互关联性。它将多变量时间序列分解为趋势、季节性和噪声,对去趋势/去季节性信号进行迭代分割。我们使用模拟多变量数据和随机取样的真实世界数据对 DRMAT 进行了定量评估,包括森林干扰(枯竭)和恢复(植被恢复)引起的微妙土地覆被变化,以及各种土地覆被类型的微妙变化。我们还定性评估了 DRMAT 在绘制真实世界干扰图方面的作用。对于在趋势和季节性方面都有规定断点的模拟数据,DRMAT 检测到趋势断点的 F1 得分为 85.5%,检测到季节性断点的 F1 得分为 91.7%。对于真实世界的森林植被数据,DRMAT 可以揭示干扰和随后的恢复,干扰的 F1 得分为 95.1%,恢复的 F1 得分为 77.1%。在更广泛的土地覆被类型中,它能检测到干扰,F1 得分为 84.0%。我们证明,在断点检测中,使用全波段数据比使用选定波段更准确。将植被指数作为模型输入并不能提高准确性,除非原始输入波段缺乏植被指数中的特定波段信息。作为一种多变量方法,DRMAT 利用了多光谱数据中的全部信息,避免了对单个波段结果进行整合的必要性。
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引用次数: 0
Mobile laser scanning as reference for estimation of stem attributes from airborne laser scanning 以移动激光扫描为参考,从机载激光扫描中估算茎干属性
IF 11.1 1区 地球科学 Q1 ENVIRONMENTAL SCIENCES Pub Date : 2024-09-10 DOI: 10.1016/j.rse.2024.114414
Raul de Paula Pires, Eva Lindberg, Henrik Jan Persson, Kenneth Olofsson, Johan Holmgren

The acquisition of high-quality reference data is essential for effectively modelling forest attributes. Incorporating close-range Light Detection and Ranging (LiDAR) systems into the reference data collection stage of remote sensing-based forest inventories can not only increase data collection efficiency but also increase the number of attributes measured with high quality. Therefore, we propose a model-based forest inventory method that uses reference data collected by a car-mounted mobile laser scanning (MLS) system along boreal forest roads. This approach is used for the estimation of diameter at breast height (DBH) and stem volume at the individual tree-level from airborne laser scanning (ALS) data. In addition, we compare the estimates obtained using the proposed method with the ones derived from reference data collected by traditional field inventory of 265 field plots systematically distributed over the study area. The accuracy of the estimates remained comparable regardless of the reference dataset used for estimation of DBH and stem volume. When using the field inventory dataset for model training, the root mean square error (RMSE) of DBH estimates were 4.06 cm (18.8 %) for Norway spruce trees, 6.3 cm (29.6 %) for Scots pine and 8.61 cm (55.9 %) for deciduous trees. Similarly, when evaluating predictions based on the MLS dataset as reference, RMSEs were equal to 3.97 cm (18.4 %) for Norway spruce, 6.12 cm (28.8 %) for Scots pine, and 8.98 cm (58.3 %) for deciduous trees. In general, biases were below 1 cm for most species classes, with the exception of deciduous trees. The accuracy of stem volume also had RMSEs varying across different tree species. For the estimates based on traditional field inventory, the RMSEs were 0.176 m3 (38.8 %) for Norway spruce, 0.228 m3 (52.4 %) for Scots pine and 0.246 m3 (158 %) for deciduous trees. When using the MLS dataset as a reference, the RMSEs were equal to 0.176 m3 (38.8 %), 0.228 m3 (52.4 %), and 0.246 m3 (158 %) for Norway spruce, Scots pine, and deciduous trees, respectively. Car-mounted MLS demonstrated its potential as an efficient alternative for collecting reference data in remote sensing-based forest inventories, which could complement traditional methods.

获取高质量的参考数据对于有效建立森林属性模型至关重要。在基于遥感的森林资源清查的参考数据收集阶段纳入近距离光探测与测距(LiDAR)系统不仅能提高数据收集效率,还能增加高质量测量的属性数量。因此,我们提出了一种基于模型的森林资源清查方法,该方法使用车载移动激光扫描(MLS)系统沿北方森林道路采集的参考数据。这种方法可用于根据机载激光扫描(ALS)数据估算单棵树木的胸径(DBH)和茎干体积。此外,我们还将使用建议方法获得的估算值与通过对研究区域内系统分布的 265 个田间地块进行传统的实地清查所收集的参考数据得出的估算值进行了比较。无论使用哪种参考数据集估算 DBH 和茎干体积,估算结果的准确性都相当。使用野外调查数据集进行模型训练时,挪威云杉的 DBH 估计值均方根误差 (RMSE) 为 4.06 厘米(18.8%),苏格兰松树为 6.3 厘米(29.6%),落叶树为 8.61 厘米(55.9%)。同样,在以 MLS 数据集为参考进行预测评估时,挪威云杉的均方根误差为 3.97 厘米(18.4%),苏格兰松树为 6.12 厘米(28.8%),落叶树为 8.98 厘米(58.3%)。一般来说,除落叶树外,大多数树种的偏差都低于 1 厘米。不同树种的茎干体积精度均方根误差也各不相同。对于基于传统实地清查的估计值,挪威云杉的均方根误差为0.176立方米(38.8%),苏格兰松为0.228立方米(52.4%),落叶树为0.246立方米(158%)。以 MLS 数据集为参考,挪威云杉、苏格兰松树和落叶树的均方根误差分别为 0.176 立方米(38.8%)、0.228 立方米(52.4%)和 0.246 立方米(158%)。车载式 MLS 证明了其作为基于遥感的森林资源调查中收集参考数据的有效替代方法的潜力,可作为传统方法的补充。
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引用次数: 0
Sea surface current estimation using optical satellite imagery of Kelvin wakes and AIS data 利用开尔文涡流光学卫星图像和 AIS 数据估算海面洋流
IF 11.1 1区 地球科学 Q1 ENVIRONMENTAL SCIENCES Pub Date : 2024-09-09 DOI: 10.1016/j.rse.2024.114400
Koen Haakman , Martin Verlaan , Avelon Gerritsma , Arne van der Hout

Sea surface currents are of significant importance in various scientific and maritime applications. There are several measurement techniques available to study surface currents, however, they have limitations in spatial coverage and resolution. This study presents a proof-of-concept for a new measurement principle that relies on the difference between a ship’s speed relative to water and land. The approach involves estimating the ship speed vector relative to water from optical satellite imagery of Kelvin wakes. This ship speed vector is subtracted from the ship speed over ground, which is determined from Automatic Identification System (AIS) data, to estimate the surface current. A case study in the Strait of Gibraltar was performed using two months of Sentinel-2 imagery, which yielded 81 visible Kelvin wakes over 25 images. Surface currents were estimated in directions parallel and perpendicular to the ship’s sailing line for each Kelvin wake. The estimated currents were validated with respect to surface currents derived from High-Frequency Radars (HFRs) and modelled currents from the Copernicus Marine Environmental Monitoring Service (CMEMS). The uncertainty in the two surface current components was estimated using triple collocation. After removing 12 data points with large ship course variability, standard deviations of 0.14 and 0.16 m s−1 were estimated for the surface currents along and across the sailing line, respectively. Despite limitations in measurement frequency due to satellite revisit times, cloud cover and Kelvin wake visibility, this new method can provide accurate estimates of sea surface currents in regions with high vessel density.

海面洋流在各种科学和海事应用中具有重要意义。目前有多种测量技术可用于研究海面洋流,但这些技术在空间覆盖范围和分辨率方面存在局限性。本研究提出了一种新测量原理的概念验证,该原理依赖于船舶相对于水面和陆地的速度差。该方法包括从开尔文波的光学卫星图像中估算相对于水面的船速矢量。该船速矢量减去根据自动识别系统(AIS)数据确定的地面船速,即可估算出海面洋流。在直布罗陀海峡进行的案例研究使用了两个月的哨兵-2 图像,在 25 幅图像中发现了 81 个可见的开尔文漩涡。对每个开尔文尾流的平行和垂直于船舶航行线的方向进行了海流估算。根据高频雷达(HFR)和哥白尼海洋环境监测服务(CMEMS)模拟的海流,对估算的海流进行了验证。两个表层海流分量的不确定性是通过三重定位估算出来的。在剔除 12 个船舶航向变化较大的数据点后,估算出沿航 线和跨航线表层流的标准偏差分别为 0.14 和 0.16 m s-1。尽管卫星重访时间、云层和开尔文尾流能见度对测量频率有一定的限制,但这种新方法可以在船只密度较高的地区准确估算海面洋流。
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引用次数: 0
Improving estimation of diurnal land surface temperatures by integrating weather modeling with satellite observations 通过将天气建模与卫星观测相结合改进对昼夜陆地表面温度的估计
IF 11.1 1区 地球科学 Q1 ENVIRONMENTAL SCIENCES Pub Date : 2024-09-07 DOI: 10.1016/j.rse.2024.114393
Wei Chen , Yuyu Zhou , Ulrike Passe , Tao Zhang , Chenghao Wang , Ghassem R. Asrar , Qi Li , Huidong Li

Land surface temperature (LST) derived from satellite observations and weather modeling has been widely used for investigating Earth surface-atmosphere energy exchange and radiation budget. However, satellite-derived LST has a trade-off between spatial and temporal resolutions and missing observations caused by clouds, while there are limitations such as potential bias and expensive computation in model calibration and simulation for weather modeling. To mitigate those limitations, we proposed a WRFM framework to estimate LST at a spatial resolution of 1 km and temporal resolution of an hour by integrating the Weather Research and Forecasting (WRF) model and MODIS satellite data using the morphing technique. We tested the framework in eight counties, Iowa, USA, including urban and rural areas, to generate hourly LSTs from June 1st to August 31st, 2019, at a 1 km resolution. Upon evaluation with in-situ LST measurements, our WRFM framework has demonstrated its ability to capture hourly LSTs under both clear and cloudy conditions, with a root mean square error (RMSE) of 2.63 K and 3.75 K, respectively. Additionally, the assessment with satellite LST observations has shown that the WRFM framework can effectively reduce the bias magnitude in LST from the WRF simulation, resulting in a reduction of the average RMSE over the study area from 4.34 K (daytime) and 4.12 K (nighttime) to 2.89 K (daytime) and 2.75 K (nighttime), respectively, while still capturing the hourly patterns of LST. Overall, the WRFM is effective in integrating the complementary advantages of satellite observations and weather modeling and can generate LSTs with high spatiotemporal resolutions in areas with complex landscapes (e.g., urban).

卫星观测和天气建模得出的陆地表面温度(LST)已被广泛用于研究地球表面-大气能量交换和辐射预算。然而,卫星获取的陆地表面温度需要在时空分辨率和云层造成的观测缺失之间进行权衡,同时在天气建模的模型校准和模拟中还存在潜在偏差和计算成本高昂等局限性。为了缓解这些局限性,我们提出了一个 WRFM 框架,通过使用变形技术将天气研究和预报(WRF)模型与 MODIS 卫星数据相结合,估算出空间分辨率为 1 公里、时间分辨率为 1 小时的低温层。我们在美国爱荷华州的八个县(包括城市和农村地区)对该框架进行了测试,以生成 2019 年 6 月 1 日至 8 月 31 日每小时 1 千米分辨率的 LST。根据原地 LST 测量结果进行评估后,我们的 WRFM 框架证明了其在晴朗和多云条件下捕捉每小时 LST 的能力,均方根误差(RMSE)分别为 2.63 K 和 3.75 K。此外,利用卫星 LST 观测数据进行的评估表明,WRFM 框架可以有效降低 WRF 模拟 LST 的偏差幅度,从而将研究区域的平均均方根误差分别从 4.34 K(白天)和 4.12 K(夜间)降低到 2.89 K(白天)和 2.75 K(夜间),同时仍能捕捉 LST 的小时模式。总体而言,WRFM 能有效整合卫星观测和天气模式的互补优势,并能在地貌复杂地区(如城市)生成高时空分辨率的 LST。
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引用次数: 0
Monitoring spatially heterogeneous riparian vegetation around permanent waterholes: A method to integrate LiDAR and Landsat data for enhanced ecological interpretation of Landsat fPAR time-series 监测永久性水坑周围空间异质性河岸植被:整合激光雷达和大地遥感卫星数据以加强大地遥感卫星 fPAR 时间序列生态解释的方法
IF 11.1 1区 地球科学 Q1 ENVIRONMENTAL SCIENCES Pub Date : 2024-09-07 DOI: 10.1016/j.rse.2024.114382
Marcelo Henriques , Tim R. McVicar , Kate L. Holland , Edoardo Daly

The vegetation dynamics in highly heterogeneous landscapes (e.g., riparian vegetation surrounding waterholes and oases) are difficult to detect from large (e.g., MODIS) and moderate (e.g., Landsat) spatial resolution remote sensing products. Within a “classify-to-monitor” approach, a method to monitor spatially heterogeneous riparian vegetation dynamics is developed by integrating high spatial resolution discrete return airborne LiDAR data (1 m pixels) with moderate resolution Landsat fraction of Photosynthetically Active Radiation absorbed by vegetation (fPAR) data (30 m). LiDAR was used to identify and classify vegetation surrounding permanent waterholes within the Cooper Creek floodplain, in dryland Australia. These waterholes are important areas for ecological conservation given their highly spatially heterogeneous vegetation structure. Landsat fPAR was temporally decomposed into persistent and recurrent components and then integrated with the LiDAR-derived vegetation classes. The LiDAR data were used as a mask to separate the fPAR signal of each vegetation class, capturing their specific dynamics and which fPAR component they are associated with. The newly developed method provides the means to improve the interpretation of Landsat fPAR by monitoring distinct vegetation functional groups within each Landsat pixel. Results showed that LiDAR data provided good estimates of vegetation cover compared to field measurements (R2=0.952). LiDAR data identified different vegetation structural classes within the riparian zone. The integration of LiDAR and Landsat data permitted the distinction of temporal patterns of each vegetation structural class, uncovering the specific temporal and spatial variability of fPAR that would otherwise be undetected. Landsat fPAR provided information on which vegetation component contributed to the fPAR variability in each class, thus providing the means for enhanced ecological interpretation of the temporally decomposed fPAR components. The method can be applied to other similar highly spatially heterogeneous ecosystems to monitor structurally specific vegetation dynamics more accurately than if only using moderate spatial resolution time-series optical satellite imagery.

大型(如 MODIS)和中型(如 Landsat)空间分辨率遥感产品很难探测到高度异质景观(如水潭和绿洲周围的河岸植被)的植被动态。在 "从分类到监测 "的方法中,通过将高空间分辨率离散回波机载激光雷达数据(1 米像素)与中等分辨率大地遥感卫星植被吸收的光合有效辐射分数(fPAR)数据(30 米)相结合,开发了一种监测空间异质性河岸植被动态的方法。利用激光雷达对澳大利亚干旱地区库珀溪洪泛区永久性水坑周围的植被进行了识别和分类。由于这些水潭的植被结构在空间上具有高度异质性,因此是生态保护的重要区域。陆地卫星 fPAR 在时间上被分解为持久和经常成分,然后与 LiDAR 导出的植被类别进行整合。利用激光雷达数据作为掩码,分离出每个植被类别的 fPAR 信号,捕捉其特定动态以及与之相关的 fPAR 成分。新开发的方法通过监测每个大地遥感卫星像素内不同的植被功能群,提供了改进大地遥感卫星 fPAR 解译的方法。结果表明,与实地测量结果相比,激光雷达数据能很好地估计植被覆盖度(R2=0.952)。激光雷达数据确定了河岸地带不同的植被结构等级。通过整合激光雷达和大地遥感卫星数据,可以区分每个植被结构类别的时间模式,从而发现 fPAR 的特定时空变异性,否则这些变异性将无法被发现。大地遥感卫星 fPAR 提供了关于哪种植被成分导致了每类植被的 fPAR 变化的信息,从而为加强对时间分解的 fPAR 成分的生态解释提供了手段。该方法可应用于其他类似的高度空间异质性生态系统,以比仅使用中等空间分辨率时间序列光学卫星图像更准确地监测特定结构的植被动态。
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引用次数: 0
Nearshore satellite-derived bathymetry from a single-pass satellite video: Improvements from adaptive correlation window size and modulation transfer function 从单通卫星视频中获取近岸卫星水深测量数据:自适应相关窗口大小和调制传递函数带来的改进
IF 11.1 1区 地球科学 Q1 ENVIRONMENTAL SCIENCES Pub Date : 2024-09-07 DOI: 10.1016/j.rse.2024.114411
Adrien N. Klotz , Rafael Almar , Yohan Quenet , Erwin W.J. Bergsma , David Youssefi , Stephanie Artigues , Nicolas Rascle , Boubou Aldiouma Sy , Abdoulaye Ndour

Accurate nearshore bathymetry estimation remains a critical challenge, impacting coastal forecasting evolution assessments through the inaccuracies in both in-situ and remote sensing surveys. This article introduces the Satellite Derived Bathymetry (SDB) temporal correlation method, showcasing its ability in deriving accurate nearshore bathymetry from one minute spaceborne videos. The approach utilises correlation of pixel intensity time series, shifted in time and space, extracted from a frame stack within a defined correlation window. The resulting correlation is then projected using the Radon Transform to infer wave characteristics (celerity and wavelength) for the estimation of depth through wave linear dispersion. Moreover, the adaptation of the correlation window based on a first wavelength estimation provided a more focused assessment of the wavefield that reveals morphological features such as sandbars in the bathymetric estimation. The method’s capabilities using adapted correlation window is illustrated through its application to a metric resolution Jilin satellite video (57 s at 5 Hz) along the Saint-Louis coast in Senegal. Through this demonstration, the temporal correlation method is among the first SDB methods to successfully capture the submerged sandbar along a beach. Comparison against in-situ measurements conducted three years prior to the video acquisition shows a good agreement with a bias of 0.97 m within the initial 2 km of the cross-shore profile. Furthermore, the application of previously developed sky-glint surface elevation analysis on video pixel intensity, prior to the bathymetry estimation, significantly reduces the bias to 0.44 m in the Saint-Louis estimation. This article highlights the potential applications of future Earth observation satellite missions that will capture image sequences (or videos) such as CO3D (CNES/Airbus).

近岸水深的精确估算仍然是一个严峻的挑战,由于原位和遥感勘测的不准确性,对沿岸预报演化评估产生了影响。本文介绍了卫星推算水深(SDB)时间相关方法,展示了该方法从一分钟空间视频推算准确近岸水深的能力。该方法利用从定义的相关窗口内的帧堆栈中提取的像素强度时间序列的相关性,在时间和空间上进行移动。然后利用拉顿变换对相关结果进行投影,以推断波浪特征(流速和波长),从而通过波浪线性色散估算深度。此外,根据第一次波长估算对相关窗口进行调整,可对波场进行更有针对性的评估,从而在测深估算中揭示沙洲等形态特征。通过将该方法应用于塞内加尔圣路易沿岸的米分辨率吉林卫星视频(57 秒,5 赫兹),说明了该方法使用调整后的相关窗口的能力。通过该演示,时间相关方法是首批成功捕捉海滩水下沙洲的 SDB 方法之一。与视频采集前三年进行的现场测量结果进行比较后发现,在跨海岸剖面的最初 2 千米范围内,偏差为 0.97 米,两者吻合度很高。此外,在进行水深估算之前,对视频像素强度应用之前开发的天空燧石表面高程分析,大大减少了圣路易估算的偏差,仅为 0.44 米。本文强调了未来地球观测卫星任务的潜在应用,这些任务将捕获图像序列(或视频),如 CO3D(法国国家空间研究中心/空中客车公司)。
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引用次数: 0
期刊
Remote Sensing of Environment
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