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Grounding truth via ordinal annotation

机译:通过顺序注释接地真理

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摘要

The question of how to best annotate affect within available content has been a milestone challenge for affective computing. Appropriate methods and tools addressing that question can provide better estimations of the ground truth which, in turn, may lead to more efficient affect detection and more reliable models of affect. This paper introduces a rank-based real-time annotation tool, we name AffectRank, and compares it against the popular rating-based real-time FeelTrace tool through a proof-of-concept video annotation experiment. Results obtained suggest that the rank-based (ordinal) annotation approach proposed yields significantly higher inter-rater reliability and, thereby, approximation of the underlying ground truth. The key findings of the paper demonstrate that the current dominant practice in continuous affect annotation via rating-based labeling is detrimental to advancements in the field of affective computing.
机译:如何在可用内容中最佳注释影响的问题是情感计算的里程碑挑战。解决该问题的适当方法和工具可以提供更好的地面真理估计,反过来可能导致更有效的影响检测和更可靠的影响模型。本文介绍了一种基于秩的实时注释工具,我们名称Affectrank,并通过概念验证视频注释实验对基于流行的基于额定值的实时感觉工具进行比较。得到的结果表明,基于秩的(序数)注释方法提出了额外的帧间性可靠性,从而提高了基础原理的近似值。本文的关键发现表明,通过基于额定值的标记进行连续影响注释的当前主导实践对情感计算领域的进步有害。

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