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EAGLE-Eye: Extreme-pose Action Grader using detaiL bird’s-Eye view

机译:鹰眼:使用细节鸟瞰图的极端姿势行动成绩器

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Measuring the quality of a sports action entails attending to the execution of the short-term components as well as overall impression of the whole program. In this assessment, both appearance clues and pose dynamics features should be involved. Current approaches often treat a sports routine as a simple fine-grained action, while taking little heed of its complex temporal structure. Besides, they rely solely on either appearance or pose features to score the performance. In this paper, we present JCA and ADA blocks that are responsible for reasoning about the coordination among the joints and appearance dynamics throughout the performance. We build our two-stream network upon the separate stack of these blocks. The early blocks capture the fine-grained temporal dependencies while the last ones reason about the long-term coarse-grained relations. We further introduce an annotated dataset of sports images with unusual pose configurations to boost the performance of pose estimation in such scenarios. Our experiments show that the proposed method not only outperforms the previous works in short-term action assessment but also is the first to generalize well to minute-long figure-skating scoring.
机译:测量体育活动的质量需要参加执行短期组件以及整个计划的整体印象。在该评估中,应涉及外观线索和姿势动态特征。目前的方法经常将体育常规视为一个简单的细粒度作用,同时只关注其复杂的时间结构。此外,他们完全依靠外观或姿势特征来得分性能。在本文中,我们展示了JCA和ADA块,负责在整个表现过程中接受关节和外观动态之间的协调。我们在这些块的单独堆栈上构建我们的双流网络。早期的块捕获细粒度的时间依赖性,而最后一个关于长期粗粒关系的原因。我们进一步引入了具有不寻常的姿势配置的运动图像的注释数据集,以提高这种情况下的姿势估计的性能。我们的实验表明,该方法不仅优于以前的短期行动评估中之前的工作,而且是第一个概括到微小的人士滑冰得分。

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