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首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >An improved scheme for rice phenology estimation based on time-series multispectral HJ-1A/B and polarimetric RADARSAT-2 data
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An improved scheme for rice phenology estimation based on time-series multispectral HJ-1A/B and polarimetric RADARSAT-2 data

机译:基于时间序列多光谱HJ-1A / B和偏振雷达拉特-2数据的稻瘟病估计改进方案

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摘要

Rice phenology information is critical for farm management and productivity evaluation. Synthetic aperture radar (SAR) and optical remote sensing data are very useful for monitoring rice growth. Therefore, this paper focuses on building a robust, accurate and operational scheme for phenology estimation based on SAR and multi spectral remote sensing data. The proposed scheme has three main improvements. First, two main types of rice field - transplanted indica rice field (TRF) and direct-sown japonica rice field (DRF) - were considered individually. Second, 149 SAR signatures and optical Vegetation Indices (Vls) were extracted from time-series of optical and full/compact-pol SAR data and a novel feature selection method based on Monte Carlo experiments and the correlation limitation (MCCL) was proposed. Third, six different phenological labeling cases were considered, with the multiclass relevant vector machine (mRVM) being used to identify different stages. Based on the improvements above, we generated the optimal feature matrix based on the MCCL; this matrix consisted of the optimal feature subset (OFS) used for the identification of each stage. The overall phenological estimation accuracy (OPEA) based on the optical Vls and SAR signatures together (86.59%), was shown to be better than that based on either the optical Vls or the SAR signatures only. In addition, it was significant to consider the differences between the DRF and TRF for rice phenology estimation. The OPEA was higher than 85% when the DRF and TRF were considered separately, much higher than the accuracy obtained (68.89%) when the differences between the DRF and TRF were ignored. Lastly, the availability of the proposed feature selection method MCCL was discussed. It was found that the best OPEA was generated using the OFS selected by the proposed MCCL when the dimensions of the OFS were kept small. (C) 2017 Elsevier Inc. All rights reserved.
机译:水稻候选信息对于农场管理和生产力评估至关重要。合成孔径雷达(SAR)和光学遥感数据对于监测水稻生长非常有用。因此,本文侧重于基于SAR和多光谱遥感数据构建良好,准确和操作的候选候选方案。拟议的计划有三个主要改进。首先,两种主要类型的稻田 - 移植的籼稻(TRF)和直接播种的粳稻(DRF) - 被单独考虑。其次,从时序序列提取了149个SAR签名和光学植被指数(VLS),并提出了一种基于蒙特卡罗实验的新型特征选择方法,并提出了相关限制(MCCL)。第三,考虑了六种不同的酚醛标记病例,用多种多组相关载体机(MRVM)用于识别不同的阶段。基于上述改进,我们基于MCCL生成了最佳特征矩阵;该矩阵由用于识别每个阶段的最佳特征子集(OFS)组成。基于光学VLS和SAR签名的总体鉴别估计精度(OPEA)显示在一起,基于光学VLS或SAR签名来更好。此外,考虑DRF和TRF的差异是显着的稻瘟病估计。当DRF和TRF分开考虑,OPEA高于85%,当DRF和TRF之间的差异被忽略时,高于获得的准确性(68.89%)。最后,讨论了所提出的特征选择方法MCCL的可用性。结果发现,当众议尺寸保持小时,使用所提出的MCCL选择的ove生成了最好的OPEA。 (c)2017年Elsevier Inc.保留所有权利。

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