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Visual mining of multimedia data for social and behavioral studies

机译:用于社会和行为研究的多媒体数据的视觉挖掘

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With advances in computing techniques, a large amount of high-resolution high-quality multimedia data (video and audio, etc.) has been collected in research laboratories in various scientific disciplines, particularly in social and behavioral studies. How to automatically and effectively discover new knowledge from rich multimedia data poses a compelling challenge since state-of-the-art data mining techniques can most often only search and extract pre-defined patterns or knowledge from complex heterogeneous data. In light of this, our approach is to take advantages of both the power of human perception system and the power of computational algorithms. More specifically, we propose an approach that allows scientists to use data mining as a first pass, and then forms a closed loop of visual analysis of current results followed by more data mining work inspired by visualization, the results of which can be in turn visualized and lead to the next round of visual exploration and analysis. In this way, new insights and hypotheses gleaned from the raw data and the current level of analysis can contribute to further analysis. As a first step toward this goal, we implement a visualization system with three critical components: (1) A smooth interface between visualization and data mining. The new analysis results can be automatically loaded into our visualization tool. (2) A flexible tool to explore and query temporal data derived from raw multimedia data. We represent temporal data into two forms - continuous variables and event variables. We have developed various ways to visualize both temporal correlations and statistics of multiple variables with the same type, and conditional and high-order statistics between continuous and event variables. (3) A seamless interface between raw multimedia data and derived data. Our visualization tool allows users to explore, compare, and analyze multi-stream derived variables and simultaneously switch to access raw multimedia data. We de--monstrate various functions in our visualization program using a set of multimedia data including video, audio and motion tracking data.
机译:随着计算技术的进步,在各种科学学科的研究实验室中收集了大量的高分辨率高质量的多媒体数据(视频和音频等),特别是在社会和行为研究中。如何自动且有效地发现来自丰富的多媒体数据的新知识构成了引人注目的挑战,因为最先进的数据挖掘技术最常见的是从复杂的异构数据中搜索和提取预定义的模式或知识。鉴于此,我们的方法是利用人类感知系统的力量和计算算法的力量。更具体地说,我们提出了一种允许科学家使用数据挖掘作为第一遍的方法,然后形成当前结果的闭环视觉分析,然后通过可视化启发的更多数据挖掘工作,其结果可以转向可视化并导致下一轮的视觉探索和分析。通过这种方式,从原始数据收集的新洞察和假设和当前的分析水平可以有助于进一步分析。作为实现这一目标的第一步,我们使用三个关键组件实现可视化系统:(1)可视化和数据挖掘之间的平滑接口。新分析结果可以自动加载到我们的可视化工具中。 (2)灵活的工具,用于探索和查询从原始多媒体数据派生的时间数据。我们将时间数据分为两个形式 - 连续变量和事件变量。我们开发了各种方式来可视化与连续和事件变量之间的相同类型的多个变量的时间相关性和统计数据,以及在连续和事件变量之间的条件和高阶统计。 (3)原始多媒体数据和派生数据之间的无缝界面。我们的可视化工具允许用户探索,比较和分析多流派生变量,同时切换以访问原始多媒体数据。我们使用包括视频,音频和运动跟踪数据的一组多媒体数据在可视化程序中进行了各种功能。

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