scispace - formally typeset
Journal ArticleDOI

Composite Density Maps for Multivariate Trajectories

Reads0
Chats0
TLDR
This paper presents a flexible architecture for density maps to enable custom, versatile exploration using multiple density fields and defines six different types of blocks to create, compose, and enhance trajectories or density fields.
Abstract
We consider moving objects as multivariate time-series. By visually analyzing the attributes, patterns may appear that explain why certain movements have occurred. Density maps as proposed by Scheepens et al. [25] are a way to reveal these patterns by means of aggregations of filtered subsets of trajectories. Since filtering is often not sufficient for analysts to express their domain knowledge, we propose to use expressions instead. We present a flexible architecture for density maps to enable custom, versatile exploration using multiple density fields. The flexibility comes from a script, depicted in this paper as a block diagram, which defines an advanced computation of a density field. We define six different types of blocks to create, compose, and enhance trajectories or density fields. Blocks are customized by means of expressions that allow the analyst to model domain knowledge. The versatility of our architecture is demonstrated with several maritime use cases developed with domain experts. Our approach is expected to be useful for the analysis of objects in other domains.

read more

Content maybe subject to copyright    Report

Citations
More filters
Journal ArticleDOI

A survey on information visualization: recent advances and challenges

TL;DR: A comprehensive survey and key insights into this fast-rising area of InfoVis are presented, which identifies existing technical challenges and propose directions for future research.
Journal ArticleDOI

Visual analytics of movement: an overview of methods, tools and procedures

TL;DR: An illustrated structured survey of the state of the art in visual analytics concerning the analysis of movement data is presented and it is demonstrated, using examples, how different visual analytics techniques can support the understanding of various aspects of movement.
Journal ArticleDOI

Visual Traffic Jam Analysis Based on Trajectory Data

TL;DR: An interactive system for visual analysis of urban traffic congestion based on GPS trajectories that provides multiple views for visually exploring and analyzing the traffic condition of a large city as a whole, on the level of propagation graphs, and on road segment level.
Book

Visual Analytics of Movement

TL;DR: The authors demonstrate that visual analytics of movement data can yield exciting insights into the behavior of moving persons and objects, but can also lead to an understanding of the events that transpire when things move.
Journal ArticleDOI

A Survey of Traffic Data Visualization

TL;DR: The basic concept and pipeline of traffic data visualization is introduced, an overview of related data processing techniques is provided, and existing methods for depicting the temporal, spatial, numerical, and categorical properties of Traffic data are summarized.
References
More filters
BookDOI

Density estimation for statistics and data analysis

TL;DR: The Kernel Method for Multivariate Data: Three Important Methods and Density Estimation in Action.
Journal ArticleDOI

Space, time and visual analytics

TL;DR: Researchers should find approaches to deal with the complexities of the current data and problems and find ways to make analytical tools accessible and usable for the broad community of potential users to support spatio-temporal thinking and contribute to solving a large range of problems.
Journal ArticleDOI

Spatial Generalization and Aggregation of Massive Movement Data

TL;DR: A method for spatial generalization and aggregation of movement data, which transforms trajectories into aggregate flows between areas, and introduces local and global numeric measures of the quality of the generalization.
Journal ArticleDOI

Space-time density of trajectories: exploring spatio-temporal patterns in movement data

TL;DR: The concept of 3D space–time density of trajectories to solve the problem of cluttering in the space– time cube is introduced and an application to real-time movement data is presented, that is, vessel movement trajectories acquired using the Automatic Identification System equipment on ships in the Gulf of Finland.
Proceedings ArticleDOI

Spatio-temporal aggregation for visual analysis of movements

TL;DR: The ways of using aggregation for visual analysis of movement data is investigated and aggregation methods suitable for movement data are defined and visualization and interaction techniques to represent results of aggregations and enable comprehensive exploration of the data are found.
Related Papers (5)