IRIS:用于行动质量评估的可解释的规则信息分割

Hitoshi Matsuyama, Nobuo Kawaguchi, Brian Y. Lim
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引用次数: 1

摘要

人工智能驱动的体育视频动作质量评估(AQA)可以模仿奥运会裁判,作为第二意见或训练帮助评分。然而,这些人工智能方法是不可解释的,不能证明它们的分数是合理的,这对算法问责制很重要。事实上,为了解释他们的决定,体育裁判不是主观地打分,而是对每个表演序列中的多个动作使用一套一致的标准——规则。因此,我们提出IRIS对AQA的动作序列进行可解释的基于规则的分割。我们利用IRIS系统对花样滑冰成绩的评分录像进行了研究。IRIS预测(1)动作片段,(2)每个片段相对于基础分数的技术要素得分差异,(3)多个程序组件得分,以及(4)最终总分。在建模研究中,我们发现IRIS比不可解释的、最先进的模型表现得更好。在一项形成性的用户研究中,练习花样滑冰的运动员同意基于规则的解释,认为它们很有用,并且更相信人工智能的判断。这项工作强调了使用判断规则来解释人工智能决策的重要性。
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IRIS: Interpretable Rubric-Informed Segmentation for Action Quality Assessment
AI-driven Action Quality Assessment (AQA) of sports videos can mimic Olympic judges to help score performances as a second opinion or for training. However, these AI methods are uninterpretable and do not justify their scores, which is important for algorithmic accountability. Indeed, to account for their decisions, instead of scoring subjectively, sports judges use a consistent set of criteria — rubric — on multiple actions in each performance sequence. Therefore, we propose IRIS to perform Interpretable Rubric-Informed Segmentation on action sequences for AQA. We investigated IRIS for scoring videos of figure skating performance. IRIS predicts (1) action segments, (2) technical element score differences of each segment relative to base scores, (3) multiple program component scores, and (4) the summed final score. In a modeling study, we found that IRIS performs better than non-interpretable, state-of-the-art models. In a formative user study, practicing figure skaters agreed with the rubric-informed explanations, found them useful, and trusted AI judgments more. This work highlights the importance of using judgment rubrics to account for AI decisions.
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