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首页> 外文期刊>Journal of mathematical imaging and vision >Evaluation Method, Dataset Size or Dataset Content: How to Evaluate Algorithms for Image Matching?
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Evaluation Method, Dataset Size or Dataset Content: How to Evaluate Algorithms for Image Matching?

机译:评估方法,数据集大小或数据集内容:如何评估图像匹配算法?

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摘要

Most vision papers have to include some evaluation work in order to demonstrate that the algorithm proposed is an improvement on existing ones. Generally, these evaluation results are presented in tabular or graphical forms. Neither of these is ideal because there is no indication as to whether any performance differences are statistically significant. Moreover, the size and nature of the dataset used for evaluation will obviously have a bearing on the results, and neither of these factors are usually discussed. This paper evaluates the effectiveness of commonly used performance characterization metrics for image feature detection and description for matching problems and explores the use of statistical tests such as McNemar's test and ANOVA as better alternatives.
机译:大多数视觉论文必须包含一些评估工作,以证明所提出的算法是对现有算法的改进。通常,这些评估结果以表格或图形形式显示。这些都不是理想的,因为没有迹象表明任何性能差异是否在统计上是显着的。此外,用于评估的数据集的大小和性质显然会影响结果,通常不会讨论这些因素。本文评估了用于图像特征检测和匹配问题描述的常用性能表征指标的有效性,并探讨了使用统计测试(例如McNemar检验和ANOVA)作为更好的替代方法。

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