The Institute for Visualization and Interactive Systems (VIS) at the University of Stuttgart is an institute of the department of computer science in the faculty of computer science, electrical engineering and information technology. Around 70 people are conducting research and teaching in the areas of visualisation and computer graphics, human-computer interaction and cognitive systems, computer vision and pattern recognition as well as augmented and virtual reality. This DataVerse contains the research data produced by the institute in these fields. Large-scale projects – like collaborative research centres – the institute is participating in might have additional DataVerses containing data produced at VIS. Furthermore, we recommend also visiting the DataVerse of VISUS, our closely related central research institute for the area of visualisation.
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Collaborative Artificial Intelligence(Universität Stuttgart)
Collaborative Artificial Intelligence logo
Sep 1, 2022
Group headed by Andreas Bulling of the Human-Computer Interaction and Cognitive Systems department of the University of Stuttgart.
Jun 22, 2022 - Computer Vision
Schmalfuss, Jenny; Scheurer, Erik; Zhao, Heng; Karantzas, Nikolaos; Bruhn, Andrés; Labate, Demetrio, 2022, "Handwriting Inpainting Dataset", https://doi.org/10.18419/DARUS-2886, DaRUS, V1
The dataset contains binary handwriting masks, which are sampled from scanned pages. Based on the overlay size, the training and test datasets are divided into five size ranges: 0-5%, 5-10%, 10-15%, 15-20% and 20-25% of the image.
ZIP Archive - 373.6 MB - MD5: 2a552bd2adc7c70b8fb897371e07d558
Contains test and training dataset splits with handwiting masks. The test folder contains the subfolders test00, test05, test10, test15 and test20, with 1000, 1000, 1000, 1000 and 100 masks for the test dataset, respectively. The train folder contains the subfolders train00, train05, train10, train15 and train20, with 100.000, 100.000, 10.000, 10.0...
Jun 21, 2022 - SFB-TRR 161 A07 "Visual Attention Modeling for Optimization of Information Visualizations"
Wang, Yao; Bulling, Andreas, 2022, "Data for "VisRecall: Quantifying Information Visualisation Recallability via Question Answering"", https://doi.org/10.18419/DARUS-2826, DaRUS, V1, UNF:6:AuvgRc09o1rESd63AqlW9Q== [fileUNF]
Despite its importance for assessing the effectiveness of communicating information visually, fine-grained recallability of information visualisations has not been studied quantitatively so far. We propose a question-answering paradigm to study visualisation recallability and present VisRecall -- a novel dataset consisting of 200 information visual...
ZIP Archive - 4.6 MB - MD5: 4f82bd8d7e56649dc799dc0153f35189
ZIP Archive - 3.7 MB - MD5: 0302e172f0cdb8cef6a84f4ecfb31caf
ZIP Archive - 2.3 MB - MD5: 01535147f2b09ae9ce65b154af5f2ba4
ZIP Archive - 1.5 MB - MD5: 617d99e6308bb96a9ae502bb01c9d0f8
ZIP Archive - 4.0 MB - MD5: a12312bef04db29bba518c53b386f684
ZIP Archive - 3.0 MB - MD5: 46d64ab347d11ab27e2b50f2c87add58
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