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PHENOLOGY-BASED CLASSIFICATION OF MAJOR CROPS AREAS IN CENTRAL LUZON, PHILIPPINES FROM 2001-2013

机译:2001 - 2013年,菲律宾中央吕宋岛主要农作物地区主要作物分类

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Annual crops such as rice, corn and sugarcane are the major source of livelihood for a third of the Philippine population. In view of a changing climate and increasing demand for food, information on the spatial extent and distribution of these crops are important for farmers and policymakers alike. This paper will present a method developed to map crop areas in the Central Luzon Region of the Philippines using time-series Normalized Difference Vegetation Index (NDVI) maps calculated from the MODIS 8-day surface reflectance product in 250-m resolution (MOD09Q1) from 2001-2013. Reference points for classifier training and subsequent accuracy assessment were obtained using a 2003 Land Use System map. Phenology or the seasonally of the vegetation was extracted from the training points. The algorithm applied a filter to smoothen the time-series NDVI and removed spikes and outliers. The processed dataset was then used to extract seasonality parameters including start of season, end of season, peak of season, and length of growing season. A supervised classification scheme using the phenological parameters as inputs was implemented using an artificial neural network trained using resilient backpropagation. Annual maps were produced using the algorithm to reflect the changing crop between years. Accuracy assessment yielded 55.9% and 0.56 overall accuracy and kappa statistic, respectively.
机译:米饭,玉米和甘蔗等年度作物是菲律宾人口三分之一的生计的主要来源。鉴于气候变化和对食品的需求增加,有关这些作物的空间范围和分布的信息对农民和政策制定者都很重要。本文将使用从250米分辨率(Mod09Q1)的Modis 8日表面反射产品(Mod09Q1)中的Modis 8日表面反射产品计算的时间序列归一化差异植被指数(NDVI)图来展示为菲律宾中央鲁氏地区绘制作物区域的方法。 2001-2013。使用2003年土地使用系统地图获得了分类器培训和随后的精度评估的参考点。从训练点中提取酚类物种或季节性植被。该算法应用了一个过滤器来平滑时间序列NDVI并取下尖峰和异常值。然后,处理的数据集用于提取季节性参数,包括季节开始,季节结束,季节的峰值和生长季节的长度。使用使用诸如使用弹性反向的人工神经网络进行验证的人工神经网络实现了使用鉴别参数作为输入的监督分类方案。使用该算法产生年度地图,以反映年多年之间的变化作物。准确性评估分别产生了55.9%和0.56的总体准确性和κ统计。

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