Large-scale comparative visualisation of sets of multidimensional data
نویسندگان
چکیده
We present encube—a qualitative, quantitative and comparative visualisation and analysis system, with application to high-resolution, immersive three-dimensional environments and desktop displays. encube extends previous comparative visualisation systems by considering: (1) the integration of comparative visualisation and analysis into a unified system; (2) the documentation of the discovery process; and (3) an approach that enables scientists to continue the research process once back at their desktop. Our solution enables tablets, smartphones or laptops to be used as interaction units for manipulating, organising, and querying data. We highlight the modularity of encube, allowing additional functionalities to be included as required. Additionally, our approach supports a high level of collaboration within the physical environment. We show how our implementation of encube operates in a large-scale, hybrid visualisation and supercomputing environment using the CAVE2 at Monash University, and on a local desktop, making it a versatile solution. We discuss how our approach can help accelerate the discovery rate in a variety of research scenarios. Subjects Graphics, Scientific Computing and Simulation, Visual Analytics
منابع مشابه
Collaborative visual analytics of radio surveys in the Big Data era
Radio survey datasets comprise an increasing number of individual observations stored as sets of multidimensional data. In large survey projects, astronomers commonly face limitations regarding: 1) interactive visual analytics of sufficiently large subsets of data; 2) synchronous and asynchronous collaboration; and 3) documentation of the discovery workflow. To support collaborative data inquir...
متن کاملInteractive visualisation techniques for large time-dependent data sets
Flow visualisation is an attractive topic in data visualisation, offering great challenges for research. Very large data sets must be processed, consisting of multivariate data at large numbers of grid points, often arranged in many time steps. Recently, the steadily increasing performance of computers again has become a driving force for new advances in flow visualisation, especially in techni...
متن کاملBusiness Intelligence: Multidimensional Data Analysis
The relational database model is probably the most frequently used database model today. It has its strengths, but it doesn’t perform very well with complex queries and analysis of very large sets of data. As computers have grown more potent, resulting in the possibility to store very large data volumes, the need for efficient analysis and processing of such data sets has emerged. The concept o...
متن کاملVisual Data Mining of Agriculture Data
Precision Agriculture intersection of computer science and agriculture from large-scale, uniform treatment to small-scale, precise treatment large data collections one of the first steps in data mining: visualise the data Visualisation visualise data components use self-organising maps use Sammon's Mapping find hidden correlations recover data interdependencies → gain insights into data sets Da...
متن کاملVirtual Environments for Data Sharing and Visualisation - Populated Information Terrains
The Concept of Populated Information Terrains (PITS) aims to extend database technology with key ideas from the new fields of Virtual Reality (VR) and Computer Supported Cooperative Work (CSCW). PITS are virtual data spaces which support visualisation of, and cooperative work within, shared data. This paper identifies key techniques for building PITS for various types of database, including mul...
متن کاملذخیره در منابع من
با ذخیره ی این منبع در منابع من، دسترسی به آن را برای استفاده های بعدی آسان تر کنید
عنوان ژورنال:
- PeerJ Computer Science
دوره 2 شماره
صفحات -
تاریخ انتشار 2016