首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Monitoring fractional green vegetation cover dynamics over a seasonally inundated alpine wetland using dense time series HJ-1A/B constellation images and an adaptive endmember selection LSMM model
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Monitoring fractional green vegetation cover dynamics over a seasonally inundated alpine wetland using dense time series HJ-1A/B constellation images and an adaptive endmember selection LSMM model

机译:使用致致态淹没的高山湿地监测分数绿色植被覆盖动力学使用致密的时间序列HJ-1A / B星座图像和自适应终止选择LSMM模型

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Time series fractional green vegetation cover (FVC) is crucial for monitoring vegetation cover status monitoring, simulating growth processes and modeling land surfaces. Through the integration of remotely sensed data and FVC estimation models, FVC can be routinely and periodically monitored using remote sensing images over large areas. However, due to frequent cloud contamination and trade-offs in satellite sensor design, the FVC estimates from remote sensing data are not continuous, either spatially or temporally, and cannot simultaneously depict details in spatio-temporal variation. Taking the seasonally inundated Zoige alpine wetland in China as a case area, the objective of this paper is to develop a practical and effective approach to quantifying the explicit vegetation FVC details with both high spatial and temporal resolution. In this approach, 30-m multi-spectral images from the Chinese HJ-1A/B (HuanJing (HJ), which means environment in Chinese) satellite constellation with a 2-day revisit time were first composited at 16-day intervals to improve spatio-temporal continuity. Then, a new adaptive endmember selection linear spectral mixture model (ASLSMM) was proposed to improve the accuracy of FVC estimation by considering the endmember dynamics for each pixel. FVC time series were finally estimated by applying the ASLSMM to the cloudless HJ composites. The performance of the model and the spatio-temporal representational capability of the FVC estimation results were comprehensively evaluated using Unmanned Aerial Vehicle (UAV) reference images and ground measurements from an integrated, multi-scale remote sensing experiment. A traditional LSMM with fixed endmembers and the Multiple Endmember Spectral Mixture Analysis (MESMA) model were also used for model performance comparison. The results showed that the R-2 and RMSE values between the FVC estimated from the proposed model and the UAV reference were 0.7315 and 0.1016 (unitless) respectively, which was better than the results from the linear spectral mixture model with a fixed number of endmembers, with R-2 of 0.5924 and RMSE of 0.3821. The R-2 and RMSE values between the FVC estimated from MESMA and the UAV reference were 0.6327 and 0.1578, which was comparable with the ASLSMM. The accuracy evaluation usingmulti-temporal in situ measurements indicated the consistently high performance of the ASLSMM. This study highlights the feasibility of using HJ satellite constellation images to generate the temporally dense and fine spatial resolution FVC estimations for wetland and wetland-like heterogeneous landscape monitoring. The proposed approach can be viewed as a reference for generating FVC datasets from the on-going HJ constellation and similar constellation missions such as Sentinel-2A/B. (C) 2017 Elsevier Inc. All rights reserved.
机译:时间序列分数绿色植被覆盖(FVC)对于监测植被覆盖状态监测,模拟生长过程和造型陆地表面至关重要。通过远程感测数据和FVC估计模型的集成,可以使用大区域的遥感图像来常规和定期监测FVC。然而,由于卫星传感器设计中频繁的云污染和权衡,来自遥感数据的FVC估计在空间或时间不连续,并且不能同时描绘时空变化中的细节。以季节性淹没的Zoige高山湿地作为一个案例区域,本文的目的是开发一种具有高空间和时间分辨率的明确植被FVC细节的实用有效的方法。在这种方法中,来自中国HJ-1A / B(Huanjing(HJ)的30米的多光谱图像,这意味着中文的环境)卫星星座,以2天的Revisit Time在16天的间隔内首先进行补充,以改善时空连续性。然后,提出了一种新的自适应结束选择线性谱混合模型(ASLSMM),以通过考虑每个像素的终止动态来提高FVC估计的准确性。最终通过将ASLSMM应用于无云HJ复合材料来估计FVC时间序列。使用无人的空中车辆(UAV)参考图像和来自集成的多尺度遥感实验的地面测量,全面评估了模型的性能和FVC估计结果的时空代表性能力。具有固定终端和多个端环的传统LSMM和多个端环谱混合分析(MESMA)模型也用于模型性能比较。结果表明,从所提出的模型和UAV参考估计的FVC之间的R-2和RMSE值分别为0.7315和0.1016(无单位),其优于线性谱混合模型的结果,具有固定数量的终点,R-2为0.5924,RMSE为0.3821。从MESMA和UAV参考估计的FVC之间的R-2和RMSE值为0.6327和0.1578,与ASLSMM相当。使用方法的准确性评估原位测量表明ASLSMM的始终如一的高性能。本研究强调了使用HJ卫星星座图像的可行性,以产生湿地和湿地异质景观监测的时间上密集和精细空间分辨率FVC估计。所提出的方法可以被视为从正在进行的HJ星座和类似星座任务中生成FVC数据集的参考,例如Sentinel-2a / b。 (c)2017年Elsevier Inc.保留所有权利。

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