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Accounting for the area of polygon sampling units for the prediction of primary accuracy assessment indices

机译:考虑到多边形采样单元的面积以预测主要精度评估指标

摘要

Geographic Object-Based Image Analysis (GEOBIA) has become a popular alternative for land cover and land use classification. In this case, polygons can be selected as sampling units to match the conceptual model of the map. However, little attention has been paid to the use of polygons for the validation of those maps. In this paper, we quantitatively assess the prediction of the primary thematic accuracy indices when the sampling unit is a polygon. The variable size of the sample polygons is a major concern for the prediction of the accuracy indices. Indeed, the classification accuracy, in addition to being class-dependent, depends on the polygon area. A practical solution supported by a theoretical framework that is conditional to the sample dataset is proposed in this study. This new predictor takes advantage of the known classification results for an improved efficiency. Empirical results based on synthetic maps show that the new predictor outperforms alternative methods for overall accuracy. The RMSE of the area weighted predictor was achieved with 50% less sample polygons thanks to our new predictor.
机译:基于地理对象的图像分析(GEOBIA)已成为土地覆盖和土地利用分类的流行替代方法。在这种情况下,可以选择多边形作为采样单位以匹配地图的概念模型。但是,很少有人注意使用多边形来验证那些地图。在本文中,当采样单位为多边形时,我们定量评估主要主题准确性指标的预测。样本多边形的可变大小是预测精度指标的主要考虑因素。实际上,除了依赖于类别之外,分类精度还取决于多边形区域。在这项研究中,提出了一个以样品数据集为条件的理论框架支持的实用解决方案。这个新的预测变量利用已知的分类结果来提高效率。基于合成图的经验结果表明,新的预测器在总体准确性方面优于替代方法。得益于我们的新预测器,面积加权预测器的RMSE减少了50%的样本多边形。

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