差分编辑距离作为视频场景模糊的对策

P. Sidiropoulos, V. Mezaris, Y. Kompatsiaris
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引用次数: 1

摘要

本文研究了如何对视频场景分割结果进行评价的问题。评估通常是通过将场景分割算法的实验输出与ground-truth时间分解进行比较,通常在ground truth的定义上存在歧义。为了减轻这个缺点,建议使用一种称为差分编辑距离(DED)的字符串比较度量。将视频场景分割评价定义为字符串比较问题后,应用该方法限制了场景分割模糊对性能估计不确定性的影响。实验结果,包括与最先进的评估方法的比较,证明了模糊程度,并验证了所进行的分析的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Differential edit distance as a countermeasure to video scene ambiguity
In this work the problem of how to evaluate video scene segmentation results is examined. The evaluation, which is typically conducted by comparison of the experimental output of scene segmentation algorithms with a ground-truth temporal decomposition, often suffers from ambiguity in the definition of the ground truth. To alleviate this drawback the use of a string comparison measure, called differential edit distance (DED), is proposed. After defining video scene segmentation evaluation as a string comparison problem, the proposed measure is applied to limit the effect of scene segmentation ambiguity in the performance estimation uncertainty. The experimental results, which include comparisons with state of the art evaluation measures, demonstrate the ambiguity extent and verify the validity of the conducted analysis.
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