Ground Truth in Classification Accuracy Assessment: Myth and Reality

Geomatics Pub Date : 2024-02-16 DOI:10.3390/geomatics4010005
G. Foody
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Abstract

The ground reference dataset used in the assessment of classification accuracy is typically assumed implicitly to be perfect (i.e., 100% correct and representing ground truth). Rarely is this assumption valid, and errors in the ground dataset can cause the apparent accuracy of a classification to differ greatly from reality. The effect of variations in the quality in the ground dataset and of class abundance on accuracy assessment is explored. Using simulations of realistic scenarios encountered in remote sensing, it is shown that substantial bias can be introduced into a study through the use of an imperfect ground dataset. Specifically, estimates of accuracy on a per-class and overall basis, as well as of a derived variable, class areal extent, can be biased as a result of ground data error. The specific impacts of ground data error vary with the magnitude and nature of the errors, as well as the relative abundance of the classes. The community is urged to be wary of direct interpretation of accuracy assessments and to seek to address the problems that arise from the use of imperfect ground data.
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分类准确性评估中的地面实况:神话与现实
用于评估分类准确性的地面参考数据集通常被假定为完美无缺(即 100% 正确并代表地面实况)。这种假设很少有效,地面数据集的误差会导致分类的表面准确性与实际情况大相径庭。本文探讨了地面数据集质量和类别丰度的变化对准确度评估的影响。通过模拟遥感中遇到的实际情况,研究表明,使用不完善的地面数据集会给研究带来很大的偏差。具体来说,由于地面数据的误差,对每个类别和总体的精度估算,以及对衍生变量--类别面积的估算都会产生偏差。地面数据误差的具体影响因误差的大小和性质以及类别的相对丰度而异。我们敦促社会各界警惕对准确性评估的直接解释,并设法解决因使用不完善的地面数据而产生的问题。
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