While the importance of automatic image analysis is increasing at an enormous pace, recent meta-research revealed major flaws with respect to algorithm validation. Specifically, performance metrics are key for objective, transparent and comparative performance assessment, but relatively little attention has been given to the practical pitfalls when using specific metrics for a given image analysis task. A common mission of several international initiatives is therefore to provide researchers with guidelines and tools to choose the performance metrics in a problem-aware manner. This dynamically updated document has the purpose to illustrate important limitations of performance metrics commonly applied in the field of image analysis. The current version is based on a Delphi process on metrics conducted by an international consortium of image analysis experts.
翻译:虽然自动图像分析的重要性正在迅速增加,但最近的元研究揭示了算法验证方面的主要缺陷,具体地说,业绩计量是客观、透明和比较性业绩评估的关键,但在使用特定图像分析任务的具体指标时,相对较少注意实际的缺陷。因此,若干国际倡议的共同使命是向研究人员提供指导方针和工具,以便以有问题的方式选择业绩计量。这一动态更新的文件的目的是说明在图像分析领域常用的业绩计量存在重大局限性。目前版本的基础是国际图像分析专家联合会进行的关于计量的德尔菲进程。