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A Time Series Mining Approach for Agricultural Area Detection

机译:农业面积检测的时间序列采矿方法

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Acquiring meaningful data to be employed in building training sets for classification models is a costly task, both in terms of difficult to find suitable samples as well as their quantity. In this sense, Active Learning (AL) improves the training set building by providing an efficient way to select only essential data to be attached to the training set, consequently reducing its size and even enhancing model's accuracy, when compared to random sample selection. In this paper, we proposed a framework for time series classification in order to monitor sugarcane area in Sao Paulo, Brazil. The AL approach consisted of selecting seasonal time series information from less than 1 percent of each class' pixels to build the training set and evaluate this selection by an expert user supported by distance measurements, repeating this process until both distance measurement thresholds were satisfied. In most years, the classification results presented about 90 percent of correlation with official estimates based on both traditional and satellite image analysis methods. This framework can then help Land Use Change (LUC) monitoring as it produced similar results compared to other methods that demands more human and financial resources to be adopted.
机译:获取在建立分类模型的建设培训集中使用的有意义的数据是一种昂贵的任务,无论是难以找到合适的样本以及它们的数量。从这个意义上讲,主动学习(AL)通过提供一个有效的方法来改善培训集合,以便仅选择要附加到训练集的基本数据,从而降低其大小甚至提高模型的准确性,与随机采样选择相比。在本文中,我们提出了一个时间序列分类的框架,以便在巴西圣保罗监测甘蔗面积。 AL方法包括从每个级别的每个类别的阶段的季节性时间序列信息组成,以构建训练集并通过距离测量支持的专家用户评估此选择,重复该过程,直到满足距离测量阈值。在大多数年份中,分类结果与基于传统和卫星图像分析方法的官方估计量大约为90%。然后,此框架可以帮助土地利用变化(LUC)监测,因为它与需要采用更多人类和财务资源的其他方法产生类似的结果。

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