Fraunhofer Institute for Computer Graphics Research Darmstadt.
IEEE Trans Vis Comput Graph. 2013 Dec;19(12):2257-66. doi: 10.1109/TVCG.2013.178.
We present MotionExplorer, an exploratory search and analysis system for sequences of human motion in large motion capture data collections. This special type of multivariate time series data is relevant in many research fields including medicine, sports and animation. Key tasks in working with motion data include analysis of motion states and transitions, and synthesis of motion vectors by interpolation and combination. In the practice of research and application of human motion data, challenges exist in providing visual summaries and drill-down functionality for handling large motion data collections. We find that this domain can benefit from appropriate visual retrieval and analysis support to handle these tasks in presence of large motion data. To address this need, we developed MotionExplorer together with domain experts as an exploratory search system based on interactive aggregation and visualization of motion states as a basis for data navigation, exploration, and search. Based on an overview-first type visualization, users are able to search for interesting sub-sequences of motion based on a query-by-example metaphor, and explore search results by details on demand. We developed MotionExplorer in close collaboration with the targeted users who are researchers working on human motion synthesis and analysis, including a summative field study. Additionally, we conducted a laboratory design study to substantially improve MotionExplorer towards an intuitive, usable and robust design. MotionExplorer enables the search in human motion capture data with only a few mouse clicks. The researchers unanimously confirm that the system can efficiently support their work.
我们展示了 MotionExplorer,这是一个用于在大型运动捕捉数据集中探索和分析人体运动序列的系统。这种特殊类型的多元时间序列数据在医学、体育和动画等多个研究领域都具有重要意义。处理运动数据的关键任务包括分析运动状态和转换,以及通过插值和组合合成运动向量。在研究和应用人体运动数据的实践中,提供用于处理大型运动数据集合的可视化摘要和深入功能存在挑战。我们发现,这个领域可以从适当的可视检索和分析支持中受益,以在存在大量运动数据的情况下处理这些任务。为了满足这一需求,我们与领域专家一起开发了 MotionExplorer,作为一种基于交互式聚合和运动状态可视化的探索性搜索系统,作为数据导航、探索和搜索的基础。基于概览优先的可视化,用户能够基于示例查询搜索有趣的运动子序列,并根据需要详细探索搜索结果。我们与目标用户密切合作开发了 MotionExplorer,他们是从事人体运动合成和分析的研究人员,包括一项总结性的实地研究。此外,我们进行了一项实验室设计研究,以便朝着直观、可用和稳健的设计方向显著改进 MotionExplorer。用户只需点击几下鼠标即可在人体运动捕捉数据中进行搜索。研究人员一致确认,该系统能够有效地支持他们的工作。