首页> 外文期刊>International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences >INTEGRATION OF HUMAN PARTICIPATORY SENSING AND ARCHIVES OF REMOTE SENSING OBSERVATIONS FOR FIELD LEVEL CROP PHENOLOGY ESTIMATION
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INTEGRATION OF HUMAN PARTICIPATORY SENSING AND ARCHIVES OF REMOTE SENSING OBSERVATIONS FOR FIELD LEVEL CROP PHENOLOGY ESTIMATION

机译:人体参与感和遥感观测档案的集成,用于田间作物物候估计

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The rise in global population has increased food and water demand thereby causing excessive pressure on existing resources. In developing countries with fragmented land holdings there exists constant pressure on available water and land resources. Obtaining field scale crop specific information is challenging task. Advent of open freely available multi-temporal remote sensing observations with improved radiometric resolution the possibilities for near real / real time applications has increased. In this study and an attempt has been made to establish operational model for field level crop growth monitoring using integrated approach of crowd sourcing and time series of remote sensing observations. The time series of Sentinel 2 (A and B) satellite has been used to estimate crop growth related components such as vegetation indices and crop growth stage and crop phenology. In initial stage high valued cereal crop Wheat has been selected. The field level information (i.e. 108 Wheat fields) collected using mobile based agro-advisory platform mKRISHI? has been used to extract time series of Sentinel 2 observations (44 scenes for year 2016 and 2018). The moving average has been used for filling gaps in the time series of vegetation indices. The BFAST and GreenBrown package in R were used for detecting breaks in vegetation index time series and estimating crop growth stages. Analysis shows that the estimated crop phenology parameters were in better agreement with the field observations. In future more crops from different agro-climatic conditions will be considered for providing field level crop management advisory.
机译:全球人口的增加增加了粮食和水的需求,从而对现有资源造成了巨大压力。在土地所有权分散的发展中国家,可利用的水和土地资源不断受到压力。获取田间规模作物的特定信息是一项艰巨的任务。具有改进的辐射分辨率的可自由开放使用的多时相遥感观测的出现,增加了近实时/实时应用的可能性。在这项研究中,已经尝试建立使用人群采购和遥感观测的时间序列的综合方法来监测田间作物生长的操作模型。 Sentinel 2(A和B)卫星的时间序列已用于估算与作物生长有关的成分,例如植被指数,作物生长期和作物物候。在初期阶段,选择了高价值的谷物作物小麦。使用基于移动的农业咨询平台mKRISHI?收集的田间信息(即108个麦田)?已用于提取Sentinel 2观测值的时间序列(2016年和2018年的44个场景)。移动平均值已用于填补植被指数时间序列中的空白。 R中的BFAST和GreenBrown程序包用于检测植被指数时间序列的中断并估计农作物的生长阶段。分析表明,估计的作物物候参数与田间观察更为吻合。将来,将考虑更多来自不同农业气候条件的作物,以提供田间水平的作物管理咨询。

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