106 research outputs found
Using treemaps for variable selection in spatio-temporal visualisation
We demonstrate and reflect upon the use of enhanced treemaps that incorporate spatial and temporal ordering for exploring a large multivariate spatio-temporal data set. The resulting data-dense views summarise and simultaneously present hundreds of space-, time-, and variable-constrained subsets of a large multivariate data set in a structure that facilitates their meaningful comparison and supports visual analysis. Interactive techniques allow localised patterns to be explored and subsets of interest selected and compared with the spatial aggregate. Spatial variation is considered through interactive raster maps and high-resolution local road maps. The techniques are developed in the context of 42.2 million records of vehicular activity in a 98 km(2) area of central London and informally evaluated through a design used in the exploratory visualisation of this data set. The main advantages of our technique are the means to simultaneously display hundreds of summaries of the data and to interactively browse hundreds of variable combinations with ordering and symbolism that are consistent and appropriate for space- and time- based variables. These capabilities are difficult to achieve in the case of spatio-temporal data with categorical attributes using existing geovisualisation methods. We acknowledge limitations in the treemap representation but enhance the cognitive plausibility of this popular layout through our two-dimensional ordering algorithm and interactions. Patterns that are expected (e.g. more traffic in central London), interesting (e.g. the spatial and temporal distribution of particular vehicle types) and anomalous (e.g. low speeds on particular road sections) are detected at various scales and locations using the approach. In many cases, anomalies identify biases that may have implications for future use of the data set for analyses and applications. Ordered treemaps appear to have potential as interactive interfaces for variable selection in spatio-temporal visualisation. Information Visualization (2008) 7, 210-224. doi: 10.1057/palgrave.ivs.950018
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Visual analysis of sensitivity in CAT models: interactive visualisation for CAT model sensitivity analysis
Configuring Hierarchical Layouts to Address Research Questions
We explore the effects of selecting alternative layouts in hierarchical displays that show multiple aspects of large multivariate datasets, including spatial and temporal characteristics. Hierarchical displays of this type condition a dataset by multiple discrete variable values, creating nested graphical summaries of the resulting subsets in which size, shape and colour can be used to show subset properties. These 'small multiples' are ordered by the conditioning variable values and are laid out hierarchically using dimensional stacking. Crucially, we consider the use of different layouts at different hierarchical levels, so that the coordinates of the plane can be used more effectively to draw attention to trends and anomalies in the data. We argue that these layouts should be informed by the type of conditioning variable and by the research question being explored. We focus on space-filling rectangular layouts that provide data-dense and rich overviews of data to address research questions posed in our exploratory analysis of spatial and temporal aspects of property sales in London. We develop a notation ('HiVE') that describes visualisation and layout states and provides reconfiguration operators, demonstrate its use for reconfiguring layouts to pursue research questions and provide guidelines for this process. We demonstrate how layouts can be related through animated transitions to reduce the cognitive load associated with their reconfiguration whilst supporting the exploratory process
Ătat des lieux des reprĂ©sentations dynamiques des temporalitĂ©s des territoires
Le temps et ses caractĂ©ristiques ont toujours fait lâobjet de grandes attentions pour comprendre les dynamiques des territoires. Aujourdâhui, que ce soit Ă cause des nouvelles capacitĂ©s dâobservation en temps rĂ©el, de lâaccumulation des sĂ©ries de donnĂ©es au cours du temps, ou Ă cause de la multiplication des rythmes, les temporalitĂ©s Ă prendre en compte pour comprendre les dynamiques territoriales se multiplient et leurs imbrications se complexifient. Interroger les rythmes, les vitesses, les cycles de ces dynamiques, ou mettre en relation temporelle des phĂ©nomĂšnes spatiaux tels que les Ă©vĂšnements catastrophiques passĂ©s devient plus que jamais un enjeu pour comprendre et dĂ©cider.Les jeux de mĂ©thodes mobilisables aujourdâhui pour reprĂ©senter les temporalitĂ©s des territoires sont en plein renouvellement, et imposent dĂ©sormais bien souvent de franchir les fractures disciplinaires traditionnelles entre Ă©chelles, entre outils, entre formalismes. Les domaines dâapplications potentiellement concernĂ©s, comme celui du dĂ©veloppement durable des territoires, sont autant de domaines susceptibles de nourrir les questions associĂ©es Ă lâexploration des temporalitĂ©s des territoires. Le projet "ReprĂ©sentation dynamique des temporalitĂ©s des territoires" se veut un Ă©tat des lieux de diffĂ©rents dĂ©veloppements et solutions pour analyser et rendre compte des temporalitĂ©s des territoires. Cet Ă©tat des lieux est Ă entrĂ©es multiples, interrogeant Ă la fois des choix amont (modĂ©lisation) et des choix proprement liĂ©s Ă la question de la reprĂ©sentation. Le projet dĂ©bouche sur un ensemble de rĂ©sultats dont certains sont mis en ligne sur le site: http://www.map.cnrs.fr/jyb/puca/- Une grille de lecture de la collection d'applications analysĂ©e (voir onglet "47 applications"), grille oĂč sont combinĂ©s des indicateurs gĂ©nĂ©raux sur par exmeple le type de service rendu ou le type de dynamique spatiale analysĂ©e, et des indicateurs plus spĂ©cifiques au traitement des dimensions spatiales et temporelles. Cette grille est mise en place sur 47 applications identifiĂ©es et analysĂ©es,- Des visualisations rĂ©capitulatives conçues comme outils d'analyse comparative de la collection,- Une bibliographie structurĂ©e en relation avec la grille de lecture
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Visualisation of Origins, Destinations and Flows with OD Maps
We present a new technique for the visual exploration of origins (O) and destinations (D) arranged in geographic space. Previous attempts to map the flows between origins and destinations have suffered from problems of occlusion usually requiring some form of generalisation, such as aggregation or flow density estimation before they can be visualized. This can lead to loss of detail or the introduction of arbitrary artefacts in the visual representation. Here, we propose mapping OD vectors as cells rather than lines, comparable with the process of constructing OD matrices, but unlike the OD matrix, we preserve the spatial layout of all origin and destination locations by constructing a gridded twoâlevel spatial treemap. The result is a set of spatially ordered small multiples upon which any arbitrary geographic data may be projected. Using a hash grid spatial data structure, we explore the characteristics of the technique through a software prototype that allows interactive query and visualisation of 105â106 simulated and recorded OD vectors. The technique is illustrated using US county to county migration and commuting statistics
Visual analytics of movement: An overview of methods, tools and procedures
Analysis of movement is currently a hot research topic in visual analytics. A wide variety of methods and tools for analysis of movement data has been developed in recent years. They allow analysts to look at the data from different perspectives and fulfil diverse analytical tasks. Visual displays and interactive techniques are often combined with computational processing, which, in particular, enables analysis of a larger number of data than would be possible with purely visual methods. Visual analytics leverages methods and tools developed in other areas related to data analytics, particularly statistics, machine learning and geographic information science. We present an illustrated structured survey of the state of the art in visual analytics concerning the analysis of movement data. Besides reviewing the existing works, we demonstrate, using examples, how different visual analytics techniques can support our understanding of various aspects of movement
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An event-based conceptual model for context-aware movement analysis
Current tracking technologies enable collection of data, describing movements of various kinds of objects, including people, animals, icebergs, vehicles, containers with goods and so on. Analysis of movement data is now a hot research topic. However, most of the suggested analysis methods deal with movement data alone. Little has been done to support the analysis of movement in its spatio-temporal context, which includes various spatial and temporal objects as well as diverse properties associated with spatial locations and time moments. Comprehensive analysis of movement requires detection and analysis of relations that occur between moving objects and elements of the context in the process of the movement. We suggest a conceptual model in which movement is considered as a combination of spatial events of diverse types and extents in space and time. Spatial and temporal relations occur between movement events and elements of the spatial and temporal contexts. The model gives a ground to a generic approach based on extraction of interesting events from trajectories and treating the events as independent objects. By means of a prototype implementation, we tested the approach on complex real data about movement of wild animals. The testing showed the validity of the approach
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Visual analysis design to support research into movement and use of space in Tallinn: A case study
We designed and applied interactive visualisation to help an urban study group investigate how suburban residents in the Tallinn Metropolitan Area (Estonia) use space in the city. We used mobile phone positioning data collected from suburban residents together with their socio-economic characteristics. Land-use data provided geo-context that helped characterise visited locations by suburban residents. Our interactive visualisation design was informed by a set of research questions framed as identification, localisation and comparison tasks. The resulting prototype offers five linked and coordinated views of spatial, temporal, socio-economic characteristics and land-use aspects of data. Brushing, sorting and filtering provide visual means to identify similarities between individuals and facilitate the identification, localisation and comparison of patterns of use of urban space. The urban study group was able to use the prototype to explore their data and address their research questions in a more flexible way than previously possible. Initial feedback was positive. The prototype was found to support the research and facilitate the discovery of patterns and relations among groups of participants and their movements
Visualization Techniques for the Analysis of Neurophysiological Data
In order to understand the diverse and complex functions of the Human brain, the temporal relationships
of vast quantities of multi-dimensional spike train data must be analysed. A number of statistical
methods already exist to analyse these relationships. However, as a result of expansions in recording
capability hundreds of spike trains must now be analysed simultaneously.
In addition to the requirements for new statistical analysis methods, the need for more efficient data
representation is paramount. The computer science field of Information Visualization is specifically
aimed at producing effective representations of large and complex datasets. This thesis is based on
the assumption that data analysis can be significantly improved by the application of Information
Visualization principles and techniques.
This thesis discusses the discipline of Information Visualization, within the wider context of visualization.
It also presents some introductory neurophysiology focusing on the analysis of multidimensional
spike train data and software currently available to support this problem. Following this,
the Toolbox developed to support the analysis of these datasets is presented. Subsequently, three case
studies using the Toolbox are described. The first case study was conducted on a known dataset in
order to gain experience of using these methods. The second and third case studies were conducted
on blind datasets and both of these yielded compelling results
Space-in-time and time-in-space self-organizing maps for exploring spatiotemporal patterns
Spatiotemporal data pose serious challenges to analysts in geographic and other domains. Owing to the complexity of the geospatial and temporal components, this kind of data cannot be analyzed by fully automatic methods but require the involvement of the human analyst's expertise. For a comprehensive analysis, the data need to be considered from two complementary perspectives: (1) as spatial distributions (situations) changing over time and (2) as profiles of local temporal variation distributed over space. In order to support the visual analysis of spatiotemporal data, we suggest a framework based on the âSelf-Organizing Mapâ (SOM) method combined with a set of interactive visual tools supporting both analytic perspectives. SOM can be considered as a combination of clustering and dimensionality reduction. In the first perspective, SOM is applied to the spatial situations at different time moments or intervals. In the other perspective, SOM is applied to the local temporal evolution profiles. The integrated visual analytics environment includes interactive coordinated displays enabling various transformations of spatiotemporal data and post-processing of SOM results. The SOM matrix display offers an overview of the groupings of data objects and their two-dimensional arrangement by similarity. This view is linked to a cartographic map display, a time series graph, and a periodic pattern view. The linkage of these views supports the analysis of SOM results in both the spatial and temporal contexts. The variable SOM grid coloring serves as an instrument for linking the SOM with the corresponding items in the other displays. The framework has been validated on a large dataset with real city traffic data, where expected spatiotemporal patterns have been successfully uncovered. We also describe the use of the framework for discovery of previously unknown patterns in 41-years time series of 7 crime rate attributes in the states of the USA
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