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A Unified Semiotics Framework for Spatial and Non-Spatial Brain Network Data Visualizations

机译:用于空间和非空间脑网络数据可视化的统一符号学框架

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We have designed a semiotics approach for the design and evaluation of visualizations of spatial and non-spatial data. Semiotics is the study of symbols and their compositions. Motivated by scientists' increasing difficulty in acquiring knowledge from their data with increasing complexity and heterogeneity, we designed a semiotics framework to provide a unified way to study visualizations. Our semiotics approach expands upon Bertin's semiology to understand how and why visualization works. This approach can help visualization designers study visual symbols and their compositions in both two-dimensional (2D) and three-dimensional (3D) visualizations.;We claim three major contributions. Bertin's semiology classified a set of retinal properties for data presentation: position on a 2D plane, size, color, value, orientation, texture grain and shape. A mark with variations on these retinal properties is a symbol that encodes information. Our first contribution is that we have extended Bertin's 2D semiology to 3D visualizations and added shading. We have demonstrated the practicality of this extension (1) by describing existing techniques using this approach; (2) by conducting empirical studies on the effectiveness of visual encoding and shading methods for brain connectivity visualizations, including both 2D network and 3D tractography data visualizations; and (3) by a focused study on color variations. Our second contribution: using this approach as the theoretical foundation, we have demonstrated its use through two ranking studies on a set of visual symbols and their compositions. From these studies, we provided a series of design recommendations drawn upon our empirical study results to help visualization designers make more informed choices on visualization designs. Last but not least, our work expands the knowledge of visualization design by adding our ranking of visual variable effectiveness to existing ranking studies.;Human brain imaging research consists of multi-modal and heterogeneous data analyses and we applied our approach to study brain imaging data visualizations. We have conducted three user studies on 2D functional network and 3D tract data visualizations.;In the first study, we ranked and compared four retinal properties for quantitative comparison of aggregated values and four shading methods for 3D spatial structure discriminations. The results indicate that hue-varying iso-luminance color and monotonic-luminance color maps are the most effective methods for encoding quantities compared to size and texture. Shading with color encoding tract orientations was the most effective for 3D spatial structure discriminations compared to halo, depth-dependent halo and ambient occlusion lighting. The second study focused on 2D network visualizations and studied visualization performance with nine mark types (area, hue, lightness, angle, slope, length, shape, density, and texture) combined with three positioning types (projection, circular, and matrix). The results show that area and size are the most effective retinal properties. Among the three positioning methods, circular was always among the best. Projection was good when tasks demanded symmetry or proximity and matrix was good when placing marks in close proximity benefited the tasks. The last study was on color due to color being most effective in 3D dense data visualization as discovered from the first study. We studied six types of color maps (gray scale, black-body, diverging, iso-luminant, extended black-body and cool-warm) for quantitative value aggregations and four types of color mapping of spatial structure (all gray, absolute color, eigenmap embedding, and Boy's surface embedding). The results suggest that a monotonic luminance color map with a moderate amount of hue variations is the best and that orientation encoding using Boy's surface embedding provides the highest accuracy.;In conclusion, our semiotics framework has led us to design a set of novel experiments to understand how visualization works. It contributes to the understanding of complex quantitative visual aggregation and spatial discrimination tasks for 3D brain connectivity visualizations as well as a novel ranking of visual variables for showing quantitative data on 2D networks.
机译:我们设计了一种符号学方法,用于设计和评估空间和非空间数据的可视化效果。符号学是对符号及其组成的研究。由于科学家越来越难以从具有复杂性和异构性的数据中获取知识,我们设计了一个符号学框架,为研究可视化提供了统一的方法。我们的符号学方法扩展了Bertin的符号学,以了解可视化的方式和原因。这种方法可以帮助可视化设计人员研究二维(2D)和三维(3D)可视化中的视觉符号及其组成。我们主张三个主要方面。贝尔廷(Bertin)的符号学对一组视网膜属性进行了分类,以进行数据表示:在2D平面上的位置,大小,颜色,值,方向,纹理纹理和形状。这些视网膜特性发生变化的标记是编码信息的符号。我们的第一个贡献是,我们将Bertin的2D符号学扩展到了3D可视化并添加了阴影。通过描述使用这种方法的现有技术,我们已经证明了这一扩展的实用性。 (2)通过对视觉编码和阴影方法对大脑连接可视化效果的有效性进行实证研究,包括2D网络和3D射线照相术数据可视化; (3)通过对颜色变化的集中研究。我们的第二个贡献:使用这种方法作为理论基础,我们通过对一组视觉符号及其组成的两次排名研究证明了其用法。通过这些研究,我们根据经验研究结果提供了一系列设计建议,以帮助可视化设计人员在可视化设计上做出更明智的选择。最后但并非最不重要的一点是,我们的工作是通过将视觉变量有效性的排名添加到现有的排名研究中来扩展可视化设计的知识。;人脑成像研究包括多模式和异构数据分析,我们将我们的方法应用于研究脑成像数据可视化。我们在2D功能网络和3D区域数据可视化方面进行了三项用户研究。在第一项研究中,我们对四个视网膜属性进行了排名和比较,以进行聚集值的定量比较,并对4种着色方法进行了3D空间结构判别。结果表明,与大小和纹理相比,色调变化的等亮度颜色图和单调亮度颜色图是最有效的编码量方法。与光晕,与深度相关的光晕和环境光遮挡照明相比,具有颜色编码方向的阴影对于3D空间结构判别是最有效的。第二项研究集中在2D网络可视化上,研究了9种标记类型(区域,色调,亮度,角度,坡度,长度,形状,密度和纹理)与三种定位类型(投影,圆形和矩阵)的可视化性能。结果表明,面积和大小是最有效的视网膜特性。在这三种定位方法中,圆形始终是最好的。当任务需要对称或接近时,投影效果很好;当将标记靠得很近时,矩阵效果很好。上一项研究是关于颜色的,因为从第一个研究中发现,颜色在3D密集数据可视化中最有效。我们研究了六种类型的颜色图(灰度,黑体,发散,等光源,扩展的黑体和冷暖)用于定量值聚合,并研究了四种空间结构的颜色映射(全灰色,绝对颜色,本征图嵌入和Boy的表面嵌入)。结果表明,具有适度色调变化的单调亮度彩色图是最好的,并且使用Boy表面嵌入的方向编码提供了最高的准确性。;总之,我们的符号学框架使我们设计了一组新颖的实验来了解可视化的工作原理。它有助于理解3D脑连通性可视化的复杂定量视觉聚合和空间区分任务,以及用于在2D网络上显示定量数据的视觉变量的新颖排名。

著录项

  • 作者

    Zhang, Guohao.;

  • 作者单位

    University of Maryland, Baltimore County.;

  • 授予单位 University of Maryland, Baltimore County.;
  • 学科 Computer science.
  • 学位 Ph.D.
  • 年度 2017
  • 页码 225 p.
  • 总页数 225
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

  • 入库时间 2022-08-17 11:36:42

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