Videos are an accessible form of media for analyzing sports postures and providing feedback to athletes. Existing sport-specific systems embed bespoke human pose attributes and thus can be hard to scale for new attributes, especially for users without programming experiences. Some systems retain scalability by directly showing the differences between two poses, but they might not clearly visualize the key differences that viewers would like to pursue. Besides, video-based coaching systems often present feedback on the correctness of poses by augmenting videos with visual markers or reference poses. However, previewing and augmenting videos limit the analysis and visualization of human poses due to the fixed viewpoints in videos, which confine the observation of captured human movements and cause ambiguity in the augmented feedback. To address these issues, we study customizable human pose data analysis and visualization in the context of running pose attributes, such as joint angles and step distances. Based on existing literature and a formative study, we have designed and implemented a system, PoseCoach, to provide feedback on running poses for amateurs by comparing the running poses between a novice and an expert. PoseCoach adopts a customizable data analysis model to allow users' controllability in defining pose attributes of their interests through our interface. To avoid the influence of viewpoint differences and provide intuitive feedback, PoseCoach visualizes the pose differences as part-based 3D animations on a human model to imitate the demonstration of a human coach. We conduct a user study to verify our design components and conduct expert interviews to evaluate the usefulness of the system.
翻译:视频是分析体育态势和向运动员提供反馈的无障碍媒体形式; 现有的体育特定系统嵌入人姿势属性,因此很难为新的属性进行缩放,特别是对于没有编程经验的用户来说。 有些系统通过直接显示两种姿势的差异保持可缩放性,但可能没有清楚地显示观众希望追求的关键差异。 此外,视频制导系统常常提供反馈,说明通过增加视频显示的视觉标志或参考面谱来显示的构成的正确性。然而,预览和增加视频限制了对人姿势的分析和可视化,因为视频中固定的观点限制了对所捕捉的用户运动的观察,并造成更多反馈的模糊。为了解决这些问题,我们研究了可定制的人类姿势数据分析和视觉化,例如联合角度和步距等。此外,根据现有的文献和成型研究,我们设计并实施了一个系统,即PoseCoach,通过比较一个Novice和一位专家之间的运行姿势来提供对业余的配置的反馈。 PoseCoach采用一个可定制的数据分析模型,用以避免用户在视觉影响方面进行互动分析。</s>