Seegers Bridget N, Stumpf Richard P, Schaeffer Blake A, Loftin Keith A, Werdell P Jeremy
Opt Express. 2018 Mar 19;26(6):7404-7422. doi: 10.1364/OE.26.007404.
Performance assessment of ocean color satellite data has generally relied on statistical metrics chosen for their common usage and the rationale for selecting certain metrics is infrequently explained. Commonly reported statistics based on mean squared errors, such as the coefficient of determination (r), root mean square error, and regression slopes, are most appropriate for Gaussian distributions without outliers and, therefore, are often not ideal for ocean color algorithm performance assessment, which is often limited by sample availability. In contrast, metrics based on simple deviations, such as bias and mean absolute error, as well as pair-wise comparisons, often provide more robust and straightforward quantities for evaluating ocean color algorithms with non-Gaussian distributions and outliers. This study uses a SeaWiFS chlorophyll-a validation data set to demonstrate a framework for satellite data product assessment and recommends a multi-metric and user-dependent approach that can be applied within science, modeling, and resource management communities.
海洋颜色卫星数据的性能评估通常依赖于因其普遍使用而选择的统计指标,而选择某些指标的基本原理很少得到解释。基于均方误差的常见统计量,如决定系数(r)、均方根误差和回归斜率,最适用于无异常值的高斯分布,因此,对于通常受样本可用性限制的海洋颜色算法性能评估而言,往往并不理想。相比之下,基于简单偏差的指标,如偏差和平均绝对误差,以及成对比较,通常能为评估具有非高斯分布和异常值的海洋颜色算法提供更稳健、更直接的量值。本研究使用SeaWiFS叶绿素a验证数据集来展示一个卫星数据产品评估框架,并推荐一种多指标且依赖用户的方法,该方法可应用于科学、建模和资源管理领域。