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Investigating Correlations of Inter-coder Agreement and Machine Annotation Performance for Historical Video Data

机译:调查历史视频数据的编码器间协议和机器注释性能的相关性

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Video indexing approaches such as visual concept classification and person recognition are essential to enable fine-grained semantic search in large-scale video archives such as the historical video collection of the former German Democratic Republic (GDR) maintained by the German Broadcasting Archive (DRA). Typically, a lexicon of visual concepts has to be defined for semantic search. But the definition of visual concepts can be more or less subjective due to individually differing judgments of annotators, which may have an impact on training data quality for supervised machine learning methods. In this paper, we analyze the inter-coder agreement on historical TV data of the former GDR for visual concept classification and person recognition. The inter-coder agreement is evaluated for a group of expert as well as nonexpert annotators. Furthermore, correlations between visual recognition performance and inter-annotator agreement are measured. In this context, information about training dataset size and agreement are used to predict average precision for concept classification. Finally, the impact of expert vs. non-expert annotations on person recognition is analyzed.
机译:诸如视觉概念分类和人员识别之类的视频索引方法对于在大规模视频档案库中实现细粒度的语义搜索至关重要,例如由德国广播档案馆(DRA)维护的前德意志民主共和国(GDR)的历史视频集。通常,必须为视觉搜索定义视觉概念的词典。但是,由于注释者的不同判断,视觉概念的定义可能或多或少是主观的,这可能会对有监督的机器学习方法的训练数据质量产生影响。在本文中,我们分析了前GDR的历史电视数据的编解码器协议,以进行视觉概念分类和人识别。对于一组专家和非专家注释者,对编码器间协议进行了评估。此外,测量了视觉识别性能和注释者之间的一致性之间的相关性。在这种情况下,有关训练数据集大小和一致性的信息可用于预测概念分类的平均精度。最后,分析了专家注解和非专家注解对人识别的影响。

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