IEEE VIS Publication Dataset

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SciVis
2013
Vessel Visualization using Curved Surface Reformation
10.1109/TVCG.2013.215
2. 2867
J
Visualizations of vascular structures are frequently used in radiological investigations to detect and analyze vascular diseases. Obstructions of the blood flow through a vessel are one of the main interests of physicians, and several methods have been proposed to aid the visual assessment of calcifications on vessel walls. Curved Planar Reformation (CPR) is a wide-spread method that is designed for peripheral arteries which exhibit one dominant direction. To analyze the lumen of arbitrarily oriented vessels, Centerline Reformation (CR) has been proposed. Both methods project the vascular structures into 2D image space in order to reconstruct the vessel lumen. In this paper, we propose Curved Surface Reformation (CSR), a technique that computes the vessel lumen fully in 3D. This offers high-quality interactive visualizations of vessel lumina and does not suffer from problems of earlier methods such as ambiguous visibility cues or premature discretization of centerline data. Our method maintains exact visibility information until the final query of the 3D lumina data. We also present feedback from several domain experts.
Auzinger, T.;Mistelbauer, G.;Baclija, I.;Schernthaner, R.;Kochl, A.;Wimmer, M.;Groller, E.;Bruckner, S.
Vienna Univ. of Technol., Vienna, Austria|c|;;;;;;;
10.1109/TVCG.2009.138;10.1109/VISUAL.2004.104;10.1109/VISUAL.2003.1250353;10.1109/VISUAL.2003.1250400;10.1109/TVCG.2006.152;10.1109/TVCG.2009.136;10.1109/VISUAL.2002.1183754;10.1109/TVCG.2011.244;10.1109/VISUAL.2003.1250351;10.1109/TVCG.2006.201;10.1109/VISUAL.2001.964555
Reformation, volume rendering, surface approximation
SciVis
2013
Visualization of Morse Connection Graphs for Topologically Rich 2D Vector fields
10.1109/TVCG.2013.229
2. 2772
J
Recent advances in vector field topologymake it possible to compute its multi-scale graph representations for autonomous 2D vector fields in a robust and efficient manner. One of these representations is a Morse Connection Graph (MCG), a directed graph whose nodes correspond to Morse sets, generalizing stationary points and periodic trajectories, and arcs - to trajectories connecting them. While being useful for simple vector fields, the MCG can be hard to comprehend for topologically rich vector fields, containing a large number of features. This paper describes a visual representation of the MCG, inspired by previous work on graph visualization. Our approach aims to preserve the spatial relationships between the MCG arcs and nodes and highlight the coherent behavior of connecting trajectories. Using simulations of ocean flow, we show that it can provide useful information on the flow structure. This paper focuses specifically on MCGs computed for piecewise constant (PC) vector fields. In particular, we describe extensions of the PC framework that make it more flexible and better suited for analysis of data on complex shaped domains with a boundary. We also describe a topology simplification scheme that makes our MCG visualizations less ambiguous. Despite the focus on the PC framework, our approach could also be applied to graph representations or topological skeletons computed using different methods.
Szymczak, A.;Sipeki, L.
Colorado Sch. of Mines, Golden, CO, USA|c|;
10.1109/TVCG.2011.233;10.1109/TVCG.2008.135;10.1109/TVCG.2012.209;10.1109/VISUAL.2000.885716
Morse connection graph, vector field topology
VAST
2013
A Partition-Based Framework for Building and Validating Regression Models
10.1109/TVCG.2013.125
1. 1971
J
Regression models play a key role in many application domains for analyzing or predicting a quantitative dependent variable based on one or more independent variables. Automated approaches for building regression models are typically limited with respect to incorporating domain knowledge in the process of selecting input variables (also known as feature subset selection). Other limitations include the identification of local structures, transformations, and interactions between variables. The contribution of this paper is a framework for building regression models addressing these limitations. The framework combines a qualitative analysis of relationship structures by visualization and a quantification of relevance for ranking any number of features and pairs of features which may be categorical or continuous. A central aspect is the local approximation of the conditional target distribution by partitioning 1D and 2D feature domains into disjoint regions. This enables a visual investigation of local patterns and largely avoids structural assumptions for the quantitative ranking. We describe how the framework supports different tasks in model building (e.g., validation and comparison), and we present an interactive workflow for feature subset selection. A real-world case study illustrates the step-wise identification of a five-dimensional model for natural gas consumption. We also report feedback from domain experts after two months of deployment in the energy sector, indicating a significant effort reduction for building and improving regression models.
Muhlbacher, T.;Piringer, H.
;
10.1109/TVCG.2012.219;10.1109/TVCG.2009.128;10.1109/VISUAL.1993.398859;10.1109/VAST.2012.6400486;10.1109/VAST.2011.6102453;10.1109/VAST.2009.5333431;10.1109/TVCG.2010.213;10.1109/TVCG.2012.205;10.1109/VAST.2009.5332628;10.1109/VISUAL.1990.146402;10.1109/VAST.2011.6102450;10.1109/VAST.2008.4677368;10.1109/VAST.2010.5652460;10.1109/TVCG.2011.248;10.1109/INFVIS.2005.1532142;10.1109/VAST.2007.4388999;10.1109/INFVIS.2004.10;10.1109/TVCG.2009.110;10.1109/VAST.2011.6102448;10.1109/INFVIS.2004.3
Regression, model building, visual knowledge discovery, feature selection, data partitioning, guided visualization
VAST
2013
An Extensible Framework for Provenance in Human Terrain Visual Analytics
10.1109/TVCG.2013.132
2. 2148
J
We describe and demonstrate an extensible framework that supports data exploration and provenance in the context of Human Terrain Analysis (HTA). Working closely with defence analysts we extract requirements and a list of features that characterise data analysed at the end of the HTA chain. From these, we select an appropriate non-classified data source with analogous features, and model it as a set of facets. We develop ProveML, an XML-based extension of the Open Provenance Model, using these facets and augment it with the structures necessary to record the provenance of data, analytical process and interpretations. Through an iterative process, we develop and refine a prototype system for Human Terrain Visual Analytics (HTVA), and demonstrate means of storing, browsing and recalling analytical provenance and process through analytic bookmarks in ProveML. We show how these bookmarks can be combined to form narratives that link back to the live data. Throughout the process, we demonstrate that through structured workshops, rapid prototyping and structured communication with intelligence analysts we are able to establish requirements, and design schema, techniques and tools that meet the requirements of the intelligence community. We use the needs and reactions of defence analysts in defining and steering the methods to validate the framework.
Walker, R.;Slingsby, A.;Dykes, J.;Kai Xu;Wood, J.;Nguyen, P.H.;Stephens, D.;Wong, B.L.W.;Yongjun Zheng
Middlesex Univ., London, UK|c|;;;;;;;;
10.1109/TVCG.2012.252;10.1109/TVCG.2010.191;10.1109/VAST.2007.4388992;10.1109/TVCG.2006.142;10.1109/VAST.2006.261431;10.1109/TVCG.2010.154;10.1109/TVCG.2012.213;10.1109/INFVIS.2000.885086;10.1109/TVCG.2007.70577;10.1109/TVCG.2009.111;10.1109/VAST.2008.4677366;10.1109/VAST.2008.4677365;10.1109/VAST.2007.4388992;10.1109/TVCG.2009.128;10.1109/VAST.2009.5332611;10.1109/TVCG.2010.183;10.1109/VAST.2009.5333919;10.1109/TVCG.2011.209;10.1109/TVCG.2009.139;10.1109/TVCG.2008.175
Human terrain analysis, provenance, framework, bookmarks, narratives
VAST
2013
Decision Exploration Lab: A Visual Analytics Solution for Decision Management
10.1109/TVCG.2013.146
1. 1981
J
We present a visual analytics solution designed to address prevalent issues in the area of Operational Decision Management (ODM). In ODM, which has its roots in Artificial Intelligence (Expert Systems) and Management Science, it is increasingly important to align business decisions with business goals. In our work, we consider decision models (executable models of the business domain) as ontologies that describe the business domain, and production rules that describe the business logic of decisions to be made over this ontology. Executing a decision model produces an accumulation of decisions made over time for individual cases. We are interested, first, to get insight in the decision logic and the accumulated facts by themselves. Secondly and more importantly, we want to see how the accumulated facts reveal potential divergences between the reality as captured by the decision model, and the reality as captured by the executed decisions. We illustrate the motivation, added value for visual analytics, and our proposed solution and tooling through a business case from the car insurance industry.
Broeksema, B.;Baudel, T.;Telea, A.;Crisafulli, P.
IBM France Center for Adv. Studies, Univ. of Groningen, Groningen, France|c|;;;
10.1109/VISUAL.1991.175815;10.1109/VAST.2011.6102463;10.1109/VAST.2010.5652398;10.1109/VAST.2008.4677361;10.1109/VAST.2008.4677363;10.1109/TVCG.2011.185;10.1109/VAST.2011.6102457
Decision support systems, model validation and analysis, multivariate Statistics, program analysis
VAST
2013
Explainers: Expert Explorations with Crafted Projections
10.1109/TVCG.2013.157
2. 2051
J
This paper introduces an approach to exploration and discovery in high-dimensional data that incorporates a user's knowledge and questions to craft sets of projection functions meaningful to them. Unlike most prior work that defines projections based on their statistical properties, our approach creates projection functions that align with user-specified annotations. Therefore, the resulting derived dimensions represent concepts defined by the user's examples. These especially crafted projection functions, or explainers, can help find and explain relationships between the data variables and user-designated concepts. They can organize the data according to these concepts. Sets of explainers can provide multiple perspectives on the data. Our approach considers tradeoffs in choosing these projection functions, including their simplicity, expressive power, alignment with prior knowledge, and diversity. We provide techniques for creating collections of explainers. The methods, based on machine learning optimization frameworks, allow exploring the tradeoffs. We demonstrate our approach on model problems and applications in text analysis.
Gleicher, M.
Dept. of Comput. Sci., Univ. of Wisconsin - Madison, Madison, WI, USA|c|
10.1109/VAST.2012.6400487;10.1109/VAST.2012.6400486;10.1109/TVCG.2012.277;10.1109/INFVIS.2005.1532142;10.1109/INFVIS.2004.71;10.1109/TVCG.2012.256;10.1109/VAST.2010.5652392;10.1109/VAST.2012.6400490;10.1109/TVCG.2011.220;10.1109/INFVIS.1998.729559;10.1109/VAST.2011.6102448;10.1109/TVCG.2009.153
High-dimensional spaces, exploration, support vector machines
VAST
2013
HierarchicalTopics: Visually Exploring Large Text Collections Using Topic Hierarchies
10.1109/TVCG.2013.162
2. 2011
J
Analyzing large textual collections has become increasingly challenging given the size of the data available and the rate that more data is being generated. Topic-based text summarization methods coupled with interactive visualizations have presented promising approaches to address the challenge of analyzing large text corpora. As the text corpora and vocabulary grow larger, more topics need to be generated in order to capture the meaningful latent themes and nuances in the corpora. However, it is difficult for most of current topic-based visualizations to represent large number of topics without being cluttered or illegible. To facilitate the representation and navigation of a large number of topics, we propose a visual analytics system - HierarchicalTopic (HT). HT integrates a computational algorithm, Topic Rose Tree, with an interactive visual interface. The Topic Rose Tree constructs a topic hierarchy based on a list of topics. The interactive visual interface is designed to present the topic content as well as temporal evolution of topics in a hierarchical fashion. User interactions are provided for users to make changes to the topic hierarchy based on their mental model of the topic space. To qualitatively evaluate HT, we present a case study that showcases how HierarchicalTopics aid expert users in making sense of a large number of topics and discovering interesting patterns of topic groups. We have also conducted a user study to quantitatively evaluate the effect of hierarchical topic structure. The study results reveal that the HT leads to faster identification of large number of relevant topics. We have also solicited user feedback during the experiments and incorporated some suggestions into the current version of HierarchicalTopics.
Wenwen Dou;Li Yu;Xiaoyu Wang;Zhiqiang Ma;Ribarsky, W.
Univ. of North Carolina at Charlotte, Charlotte, NC, USA|c|;;;;
10.1109/VAST.2010.5652931;10.1109/VAST.2012.6400557;10.1109/TVCG.2011.239;10.1109/VAST.2011.6102461;10.1109/VAST.2012.6400485
Hierarchical topic representation, topic modeling, visual analytics, rose tree
VAST
2013
Identifying Redundancy and Exposing Provenance in Crowdsourced Data Analysis
10.1109/TVCG.2013.164
2. 2206
J
We present a system that lets analysts use paid crowd workers to explore data sets and helps analysts interactively examine and build upon workers' insights. We take advantage of the fact that, for many types of data, independent crowd workers can readily perform basic analysis tasks like examining views and generating explanations for trends and patterns. However, workers operating in parallel can often generate redundant explanations. Moreover, because workers have different competencies and domain knowledge, some responses are likely to be more plausible than others. To efficiently utilize the crowd's work, analysts must be able to quickly identify and consolidate redundant responses and determine which explanations are the most plausible. In this paper, we demonstrate several crowd-assisted techniques to help analysts make better use of crowdsourced explanations: (1) We explore crowd-assisted strategies that utilize multiple workers to detect redundant explanations. We introduce color clustering with representative selection-a strategy in which multiple workers cluster explanations and we automatically select the most-representative result-and show that it generates clusterings that are as good as those produced by experts. (2) We capture explanation provenance by introducing highlighting tasks and capturing workers' browsing behavior via an embedded web browser, and refine that provenance information via source-review tasks. We expose this information in an explanation-management interface that allows analysts to interactively filter and sort responses, select the most plausible explanations, and decide which to explore further.
Willett, W.;Ginosar, S.;Steinitz, A.;Hartmann, B.;Agrawala, M.
INRIA, Sophia-Antipolis, France|c|;;;;
10.1109/TVCG.2007.70577
Crowdsourcing, social data analysis
VAST
2013
Interactive Exploration of Implicit and Explicit Relations in Faceted Datasets
10.1109/TVCG.2013.167
2. 2089
J
Many datasets, such as scientific literature collections, contain multiple heterogeneous facets which derive implicit relations, as well as explicit relational references between data items. The exploration of this data is challenging not only because of large data scales but also the complexity of resource structures and semantics. In this paper, we present PivotSlice, an interactive visualization technique which provides efficient faceted browsing as well as flexible capabilities to discover data relationships. With the metaphor of direct manipulation, PivotSlice allows the user to visually and logically construct a series of dynamic queries over the data, based on a multi-focus and multi-scale tabular view that subdivides the entire dataset into several meaningful parts with customized semantics. PivotSlice further facilitates the visual exploration and sensemaking process through features including live search and integration of online data, graphical interaction histories and smoothly animated visual state transitions. We evaluated PivotSlice through a qualitative lab study with university researchers and report the findings from our observations and interviews. We also demonstrate the effectiveness of PivotSlice using a scenario of exploring a repository of information visualization literature.
Jian Zhao;Collins, C.;Chevalier, F.;Balakrishnan, R.
Univ. of Toronto, Toronto, ON, Canada|c|;;;
10.1109/TVCG.2008.137;10.1109/VAST.2011.6102440;10.1109/TVCG.2011.213;10.1109/TVCG.2010.154;10.1109/VAST.2006.261426;10.1109/INFVIS.2005.1532136;10.1109/TVCG.2010.205;10.1109/TVCG.2012.252;10.1109/TVCG.2006.166;10.1109/INFVIS.2000.885086
Faceted browsing, network exploration, dynamic query, interaction, information visualization, visual analytics
VAST
2013
Interactive Exploration of Surveillance Video through Action Shot Summarization and Trajectory Visualization
10.1109/TVCG.2013.168
2. 2128
J
We propose a novel video visual analytics system for interactive exploration of surveillance video data. Our approach consists of providing analysts with various views of information related to moving objects in a video. To do this we first extract each object's movement path. We visualize each movement by (a) creating a single action shot image (a still image that coalesces multiple frames), (b) plotting its trajectory in a space-time cube and (c) displaying an overall timeline view of all the movements. The action shots provide a still view of the moving object while the path view presents movement properties such as speed and location. We also provide tools for spatial and temporal filtering based on regions of interest. This allows analysts to filter out large amounts of movement activities while the action shot representation summarizes the content of each movement. We incorporated this multi-part visual representation of moving objects in sViSIT, a tool to facilitate browsing through the video content by interactive querying and retrieval of data. Based on our interaction with security personnel who routinely interact with surveillance video data, we identified some of the most common tasks performed. This resulted in designing a user study to measure time-to-completion of the various tasks. These generally required searching for specific events of interest (targets) in videos. Fourteen different tasks were designed and a total of 120 min of surveillance video were recorded (indoor and outdoor locations recording movements of people and vehicles). The time-to-completion of these tasks were compared against a manual fast forward video browsing guided with movement detection. We demonstrate how our system can facilitate lengthy video exploration and significantly reduce browsing time to find events of interest. Reports from expert users identify positive aspects of our approach which we summarize in our recommendations for future video visual analytics systems.
Meghdadi, A.H.;Irani, P.
Dept. of Comput. Sci., Univ. of Manitoba, Winnipeg, MB, Canada|c|;
10.1109/INFVIS.2004.27;10.1109/TVCG.2012.222;10.1109/VISUAL.2003.1250401
Video visual analytics, surveillance video, video visualization, video summarization, video browsing and exploration
VAST
2013
MotionExplorer: Exploratory Search in Human Motion Capture Data Based on Hierarchical Aggregation
10.1109/TVCG.2013.178
2. 2266
J
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.
Bernard, J.;Wilhelm, N.;Kruger, B.;May, T.;Schreck, T.;Kohlhammer, J.
Fraunhofer Inst. for Comput. Graphics Res. Darmstadt, Darmstadt, Germany|c|;;;;;
10.1109/VISUAL.1999.809865;10.1109/VAST.2008.4677350;10.1109/TVCG.2006.120;10.1109/TVCG.2011.181;10.1109/TVCG.2011.188
Visual analytics, exploratory search, multivariate time series, motion capture data, data aggregation, cluster glyph
VAST
2013
Open-Box Spectral Clustering: Applications to Medical Image Analysis
10.1109/TVCG.2013.181
2. 2108
J
Spectral clustering is a powerful and versatile technique, whose broad range of applications includes 3D image analysis. However, its practical use often involves a tedious and time-consuming process of tuning parameters and making application-specific choices. In the absence of training data with labeled clusters, help from a human analyst is required to decide the number of clusters, to determine whether hierarchical clustering is needed, and to define the appropriate distance measures, parameters of the underlying graph, and type of graph Laplacian. We propose to simplify this process via an open-box approach, in which an interactive system visualizes the involved mathematical quantities, suggests parameter values, and provides immediate feedback to support the required decisions. Our framework focuses on applications in 3D image analysis, and links the abstract high-dimensional feature space used in spectral clustering to the three-dimensional data space. This provides a better understanding of the technique, and helps the analyst predict how well specific parameter settings will generalize to similar tasks. In addition, our system supports filtering outliers and labeling the final clusters in such a way that user actions can be recorded and transferred to different data in which the same structures are to be found. Our system supports a wide range of inputs, including triangular meshes, regular grids, and point clouds. We use our system to develop segmentation protocols in chest CT and brain MRI that are then successfully applied to other datasets in an automated manner.
Schultz, T.;Kindlmann, G.
Univ. of Bonn, Bonn, Germany|c|;
10.1109/VISUAL.2005.1532820;10.1109/VAST.2010.5652926;10.1109/VISUAL.2000.885740;10.1109/VAST.2012.6400488;10.1109/TVCG.2009.141;10.1109/TVCG.2009.112;10.1109/TVCG.2009.177;10.1109/TVCG.2010.199;10.1109/TVCG.2009.199;10.1109/TVCG.2011.248;10.1109/TVCG.2011.253
Image segmentation, spectral clustering, high-dimensional embeddings, linked views, programming with example
VAST
2013
ScatterBlogs2: Real-Time Monitoring of Microblog Messages through User-Guided filtering
10.1109/TVCG.2013.186
2. 2031
J
The number of microblog posts published daily has reached a level that hampers the effective retrieval of relevant messages, and the amount of information conveyed through services such as Twitter is still increasing. Analysts require new methods for monitoring their topic of interest, dealing with the data volume and its dynamic nature. It is of particular importance to provide situational awareness for decision making in time-critical tasks. Current tools for monitoring microblogs typically filter messages based on user-defined keyword queries and metadata restrictions. Used on their own, such methods can have drawbacks with respect to filter accuracy and adaptability to changes in trends and topic structure. We suggest ScatterBlogs2, a new approach to let analysts build task-tailored message filters in an interactive and visual manner based on recorded messages of well-understood previous events. These message filters include supervised classification and query creation backed by the statistical distribution of terms and their co-occurrences. The created filter methods can be orchestrated and adapted afterwards for interactive, visual real-time monitoring and analysis of microblog feeds. We demonstrate the feasibility of our approach for analyzing the Twitter stream in emergency management scenarios.
Bosch, H.;Thom, D.;Heimerl, F.;Puttmann, E.;Koch, S.;Kruger, R.;Worner, M.;Ertl, T.
Visualization & Interactive Syst., Univ. of Stuttgart, Stuttgart, Germany|c|;;;;;;;
10.1109/VISUAL.2005.1532781;10.1109/VAST.2012.6400492;10.1109/VAST.2012.6400557;10.1109/TVCG.2012.291;10.1109/TVCG.2012.277;10.1109/VAST.2012.6400485;10.1109/VAST.2007.4389013;10.1109/VAST.2007.4389006;10.1109/VAST.2011.6102456;10.1109/TVCG.2008.175
Microblog analysis, Twitter, text analytics, social media monitoring, live monitoring, visual analytics, information visualization, filter construction, query construction, text classification
VAST
2013
Semantics of Directly Manipulating Spatializations
10.1109/TVCG.2013.188
2. 2059
J
When high-dimensional data is visualized in a 2D plane by using parametric projection algorithms, users may wish to manipulate the layout of the data points to better reflect their domain knowledge or to explore alternative structures. However, few users are well-versed in the algorithms behind the visualizations, making parameter tweaking more of a guessing game than a series of decisive interactions. Translating user interactions into algorithmic input is a key component of Visual to Parametric Interaction (V2PI) [13]. Instead of adjusting parameters, users directly move data points on the screen, which then updates the underlying statistical model. However, we have found that some data points that are not moved by the user are just as important in the interactions as the data points that are moved. Users frequently move some data points with respect to some other 'unmoved' data points that they consider as spatially contextual. However, in current V2PI interactions, these points are not explicitly identified when directly manipulating the moved points. We design a richer set of interactions that makes this context more explicit, and a new algorithm and sophisticated weighting scheme that incorporates the importance of these unmoved data points into V2PI.
Xinran Hu;Bradel, L.;Maiti, D.;House, L.;North, C.;Leman, S.
;;;;;
10.1109/VAST.2011.6102449;10.1109/INFVIS.1995.528686;10.1109/TVCG.2012.260;10.1109/VAST.2012.6400486;10.1109/VAST.2008.4677358
Visual to parametric interaction, visual analytics, statistical models
VAST
2013
SketchPadN-D: WYDIWYG Sculpting and Editing in High-Dimensional Space
10.1109/TVCG.2013.190
2. 2069
J
High-dimensional data visualization has been attracting much attention. To fully test related software and algorithms, researchers require a diverse pool of data with known and desired features. Test data do not always provide this, or only partially. Here we propose the paradigm WYDIWYGS (What You Draw Is What You Get). Its embodiment, SketchPadND, is a tool that allows users to generate high-dimensional data in the same interface they also use for visualization. This provides for an immersive and direct data generation activity, and furthermore it also enables users to interactively edit and clean existing high-dimensional data from possible artifacts. SketchPadND offers two visualization paradigms, one based on parallel coordinates and the other based on a relatively new framework using an N-D polygon to navigate in high-dimensional space. The first interface allows users to draw arbitrary profiles of probability density functions along each dimension axis and sketch shapes for data density and connections between adjacent dimensions. The second interface embraces the idea of sculpting. Users can carve data at arbitrary orientations and refine them wherever necessary. This guarantees that the data generated is truly high-dimensional. We demonstrate our tool's usefulness in real data visualization scenarios.
Bing Wang;Ruchikachorn, P.;Mueller, K.
Comput. Sci. Dept., Stony Brook Univ., Stony Brook, NY, USA|c|;;
10.1109/TVCG.2011.237;10.1109/VAST.2012.6400489
Synthetic data generation, data editing, data acquisition and management, multivariate data, high-dimensional data, interaction, user interface, parallel coordinates, scatterplot, N-D navigation, multiple views
VAST
2013
Space Transformation for Understanding Group Movement
10.1109/TVCG.2013.193
2. 2178
J
We suggest a methodology for analyzing movement behaviors of individuals moving in a group. Group movement is analyzed at two levels of granularity: the group as a whole and the individuals it comprises. For analyzing the relative positions and movements of the individuals with respect to the rest of the group, we apply space transformation, in which the trajectories of the individuals are converted from geographical space to an abstract 'group space'. The group space reference system is defined by both the position of the group center, which is taken as the coordinate origin, and the direction of the group's movement. Based on the individuals' positions mapped onto the group space, we can compare the behaviors of different individuals, determine their roles and/or ranks within the groups, and, possibly, understand how group movement is organized. The utility of the methodology has been evaluated by applying it to a set of real data concerning movements of wild social animals and discussing the results with experts in animal ethology.
Andrienko, N.;Andrienko, G.;Barrett, L.;Dostie, M.;Henzi, P.
;;;;
10.1109/INFVIS.2005.1532142;10.1109/INFVIS.2004.27
Visual analytics, movement data, collective movement
VAST
2013
Space-Time Visual Analytics of Eye-Tracking Data for Dynamic Stimuli
10.1109/TVCG.2013.194
2. 2138
J
We introduce a visual analytics method to analyze eye movement data recorded for dynamic stimuli such as video or animated graphics. The focus lies on the analysis of data of several viewers to identify trends in the general viewing behavior, including time sequences of attentional synchrony and objects with strong attentional focus. By using a space-time cube visualization in combination with clustering, the dynamic stimuli and associated eye gazes can be analyzed in a static 3D representation. Shot-based, spatiotemporal clustering of the data generates potential areas of interest that can be filtered interactively. We also facilitate data drill-down: the gaze points are shown with density-based color mapping and individual scan paths as lines in the space-time cube. The analytical process is supported by multiple coordinated views that allow the user to focus on different aspects of spatial and temporal information in eye gaze data. Common eye-tracking visualization techniques are extended to incorporate the spatiotemporal characteristics of the data. For example, heat maps are extended to motion-compensated heat maps and trajectories of scan paths are included in the space-time visualization. Our visual analytics approach is assessed in a qualitative users study with expert users, which showed the usefulness of the approach and uncovered that the experts applied different analysis strategies supported by the system.
Kurzhals, K.;Weiskopf, D.
Visualization Res. Center (VISUS), Univ. of Stuttgart, Stuttgart, Germany|c|;
10.1109/TVCG.2010.149;10.1109/TVCG.2011.193;10.1109/TVCG.2012.276;10.1109/TVCG.2006.194
Eye-tracking, space-time cube, dynamic areas of interest, spatiotemporal clustering, motion-compensated heat map
VAST
2013
Supporting Awareness through Collaborative Brushing and Linking of Tabular Data
10.1109/TVCG.2013.197
2. 2197
J
Maintaining an awareness of collaborators' actions is critical during collaborative work, including during collaborative visualization activities. Particularly when collaborators are located at a distance, it is important to know what everyone is working on in order to avoid duplication of effort, share relevant results in a timely manner and build upon each other's results. Can a person's brushing actions provide an indication of their queries and interests in a data set? Can these actions be revealed to a collaborator without substantially disrupting their own independent work? We designed a study to answer these questions in the context of distributed collaborative visualization of tabular data. Participants in our study worked independently to answer questions about a tabular data set, while simultaneously viewing brushing actions of a fictitious collaborator, shown directly within a shared workspace. We compared three methods of presenting the collaborator's actions: brushing & linking (i.e. highlighting exactly what the collaborator would see), selection (i.e. showing only a selected item), and persistent selection (i.e. showing only selected items but having them persist for some time). Our results demonstrated that persistent selection enabled some awareness of the collaborator's activities while causing minimal interference with independent work. Other techniques were less effective at providing awareness, and brushing & linking caused substantial interference. These findings suggest promise for the idea of exploiting natural brushing actions to provide awareness in collaborative work.
Hajizadeh, A.H.;Tory, M.;Leung, R.
Univ. of Victoria, Victoria, BC, Canada|c|;;
10.1109/TVCG.2011.196;10.1109/TVCG.2007.70541;10.1109/TVCG.2011.185;10.1109/VAST.2010.5652880;10.1109/INFVIS.2003.1249020;10.1109/VAST.2007.4389011;10.1109/VAST.2011.6102447
Collaboration, awareness, attentionally ambient visualization, brushing and linking, linked views, user study
VAST
2013
Supporting the Visual Analysis of Dynamic Networks by Clustering associated Temporal Attributes
10.1109/TVCG.2013.198
2. 2276
J
The visual analysis of dynamic networks is a challenging task. In this paper, we introduce a new approach supporting the discovery of substructures sharing a similar trend over time by combining computation, visualization and interaction. With existing techniques, their discovery would be a tedious endeavor because of the number of nodes, edges as well as time points to be compared. First, on the basis of the supergraph, we therefore group nodes and edges according to their associated attributes that are changing over time. Second, the supergraph is visualized to provide an overview of the groups of nodes and edges with similar behavior over time in terms of their associated attributes. Third, we provide specific interactions to explore and refine the temporal clustering, allowing the user to further steer the analysis of the dynamic network. We demonstrate our approach by the visual analysis of a large wireless mesh network.
Hadlak, S.;Schumann, H.;Cap, C.H.;Wollenberg, T.
Univ. of Rostock, Rostock, Germany|c|;;;
10.1109/INFVIS.2005.1532151;10.1109/VAST.2010.5652530;10.1109/INFVIS.2004.18;10.1109/TVCG.2011.226;10.1109/TVCG.2011.213;10.1109/TVCG.2006.193;10.1109/VAST.2012.6400493;10.1109/INFVIS.1999.801851;10.1109/TVCG.2007.70529;10.1109/INFVIS.2002.1173160
Dynamic networks, visualization, supergraph clustering
VAST
2013
Temporal Event Sequence Simplification
10.1109/TVCG.2013.200
2. 2236
J
Electronic Health Records (EHRs) have emerged as a cost-effective data source for conducting medical research. The difficulty in using EHRs for research purposes, however, is that both patient selection and record analysis must be conducted across very large, and typically very noisy datasets. Our previous work introduced EventFlow, a visualization tool that transforms an entire dataset of temporal event records into an aggregated display, allowing researchers to analyze population-level patterns and trends. As datasets become larger and more varied, however, it becomes increasingly difficult to provide a succinct, summarizing display. This paper presents a series of user-driven data simplifications that allow researchers to pare event records down to their core elements. Furthermore, we present a novel metric for measuring visual complexity, and a language for codifying disjoint strategies into an overarching simplification framework. These simplifications were used by real-world researchers to gain new and valuable insights from initially overwhelming datasets.
Monroe, M.;Rongjian Lan;Hanseung Lee;Plaisant, C.;Shneiderman, B.
Univ. of Maryland, College Park, MD, USA|c|;;;;
10.1109/TVCG.2009.117;10.1109/TVCG.2012.213;10.1109/VAST.2010.5652890
Event sequences, simplification, electronic heath records, temporal query