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Rice Growth Monitoring Using Multi-Temporal GF-1 Images

机译:使用多时间GF-1图像进行稻米生长监测

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With China Remote Sensing career advancement, a large number of independent researches and development satellites have launched. Among a new generation of high-resolution satellites, GaoFen-1 (GF-1) stands out. It sets high spatial resolution (2 m-16 m), multi-spectral and high temporal resolution (4-day) with 60 km-800 km swath in a fusion technology with strategic significance. In order to explore the adaptability of Chinese GF-1 images in rice growth monitoring, aboveground biomass (AGB) was considered as plant growth indicator. Multi-temporal GF-1 WFV images of Xinghua City, Jiangsu Province were selected for rice growth parameter retrieval. An extensive field campaign was carried out during the rice growing season in 2015. Six rice sample plots with areas larger than 200 × 200 m~2 in Xinghua City were randomly chosen in order to measure the vegetation characteristics. Only cloud-free images were selected for AGB modeling. Using Savitzky-Golay filters, daily vegetation indices (VIs) time series were created from all the GF-1 images. For modeling of AGB from GF-1, there were 42 matching AGB sample sites. The matched cumulative VIs were calculated from 10-day composite data and were adopted for the estimation of AGB. Five traditional regression equations (linear, exponential, power, logarithmic, and quadratic polynomial regression) were applied in model construction. The leave-one-out cross-validation method was implemented to test the prediction capability of the models. The cumulative NDVI-based quadratic polynomial fit function was adopted for the prediction of AGB at all stages. In this paper, the application provided an important reference of field management and decision-making information. Indicated that GF-1 satellite's high time resolution provides chances to get cloudless data, and high spatial and spectral resolution features can replace the traditional medium resolution remote sensing of agricultural growth monitoring data to a certain extent, but a lot of ground survey data still needed to improve model and monitoring accuracy. This research shows that GF-1 WFV is an important data source and the data's application in other areas of agriculture is the focus of future research.
机译:随着中国遥感职业发展,大量的独立研究和开发卫星已经发布。在新一代高分辨率卫星中,高芬-1(GF-1)脱颖而出。它在融合技术中设定了高空间分辨率(2 M-16 M),多光谱和高颞分辨率(4天),在融合技术中,具有战略意义。为了探讨中国GF-1图像在水稻生长监测中的适应性,地上生物量(AGB)被认为是植物生长指标。江苏省兴华市多时间GF-1 WFV图像被选中进行水稻生长参数检索。在2015年的大米生长季节进行了广泛的野外活动。随机选择六个稻米样本,其中兴华市大于200×200米〜2的区域,以衡量植被特征。仅为AGB建模选择无云图像。使用Savitzky-Golay滤波器,每日植被指数(VIS)时间序列是从所有GF-1图像创建的。对于GF-1的AGB建模,有42个匹配的AGB样本网站。匹配的累积VIS由10天复合数据计算,并采用估计AGB。五种传统回归方程(线性,指数,功率,对数和二次多项式回归)应用于模型结构。实施休假交叉验证方法以测试模型的预测能力。采用累积的基于NDVI的二次多项式拟合功能来预测所有阶段的AGB。在本文中,该应用提供了现场管理和决策信息的重要参考。表示GF-1卫星的高速度分辨率提供了获得无云数据的机会,并且高空间和光谱分辨率功能可以取代农业增长监测数据的传统中分辨率遥感到一定程度,但仍需要大量地面调查数据提高模型和监控准确性。本研究表明,GF-1 WFV是一个重要的数据来源,数据在其他农业领域的应用是未来研究的重点。

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