首页> 外文会议>Conference on remote sensing for agriculture, ecosystems, and hydrology XIX >Applying a particle filtering technique for canola crop growth stage estimation in Canada
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Applying a particle filtering technique for canola crop growth stage estimation in Canada

机译:应用颗粒滤波技术在加拿大加水库作物生长阶段估计

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Accurate crop growth stage estimation is important in precision agriculture as it facilitates improved crop management, pest and disease mitigation and resource planning. Earth observation imagery, specifically Synthetic Aperture Radar (SAR) data, can provide field level growth estimates while covering regional scales. In this paper, RADARSAT-2 quad polarization and TerraSAR-X dual polarization SAR data and ground truth growth stage data are used to model the influence of canola growth stages on SAR imagery extracted parameters. The details of the growth stage modeling work are provided, including a) the development of a new crop growth stage indicator that is continuous and suitable as the state variable in the dynamic estimation procedure; b) a selection procedure for SAR polarimetric parameters that is sensitive to both linear and nonlinear dependency between variables; and c) procedures for compensation of SAR polarimetric parameters for different beam modes. The data was collected over three crop growth seasons in Manitoba, Canada, and the growth model provides the foundation of a novel dynamic filtering framework for real-time estimation of canola growth stages using the multi-sensor and multi-mode SAR data. A description of the dynamic filtering framework that uses particle filter as the estimator is also provided in this paper.
机译:准确的作物生长阶段估计在精密农业中是重要的,因为它促进了改善的作物管理,害虫和疾病缓解和资源规划。地球观测图像,特别是合成孔径雷达(SAR)数据,可以在覆盖区域尺度的同时提供场级增长估计。本文在雷达拉特-2四极化和Terrasar-X双极化SAR数据和地面真理生长阶段数据用于模拟CAARA生长阶段对SAR图像提取的参数的影响。提供了增长阶段建模工作的细节,包括a)新的作物生长阶段指标的开发是连续的,并且在动态估计过程中的状态变量; b)SAR偏振参数的选择过程,对变量之间的线性和非线性依赖性敏感; c)用于不同光束模式补偿SAR偏光参数的程序。在加拿大曼尼托巴省的三种作物生长季节收集了数据,增长模型为使用多传感器和多模式SAR数据进行了用于实时估计的新型动态过滤框架的基础。本文还提供了使用粒子滤波器作为估计器的动态过滤框架的描述。

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