Department of Informatics (KIS) Nicolaus Copernicus University

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Department of Informatics (KIS) Nicolaus Copernicus University http://www.is.umk.pl 7 prof/hab: A. Cichocki (RIKEN, Japan), W. Duch, J. Meller (Univ. of Cincinnati); R. Adamczak, K. Grąbczewski, N. Jankowski, O. Sokolov 2 assistant professors (M. Grochowski, T. Piotrowski); 5 research assistants, 7 doctoral students Cooperation with R&D units in USA, Singapore, Japan, multiple EU countries.

Research fields Computer Vision, Oculometry, Accelerometry Artificial Intelligence, Neural Networks Data mining, Big Data, semantic text analysis Signal processing: audio, video, EEG, fMRI, spirography, IoT Bioinformatics, Biological system modelling Medical Informatics, psychometry, neuroinformatics, Neurocognitive research: development support in infants and children, fonematic hearing development, interactive toys and cribs, develepmental, diagnostical, therapeutical games

Joint Signal classification and compression Time series compression with autoencoder Reduced dimensionality signal classification

Ghostminer Google: ghostminer Data mining and business intelligence project realized at KIS in 1998 – 2004 GhostMiner – advanced data exploration tool branded by Fujitsu Advanced machine learning algorithms Data selection, cleansing, pre-processing, Model validation, mulitmodal data support, ensemles, k-classifiers, data visualization Multiple users worldwide

Intemi – intelligent miner Resolves problems related to data mining frameworks: steep learning curve, hundreds of components, expert knowledge is required to create solutions in these frameworks, development of generative models is expensive and time consuming Intemi utilizes meta-learning for automatic data exploration and model generation from data. Multilevel industrial, medical, financing data analysis. Insurance and bank sector.

Gaze Controlled Application Framework Personalized user interface programming for gaze trackers

Biomedical Signal Analysis

Video processing Multiview, 3D, 360-degree video. Acquisition, calibration, denoising, color interpolation, super-resolution, rectification, registration, motion estimation, compression, virtual view synthesis, computational optimization. Computer Vision, Image-Based Measurement, Crafted Acquistion Systems

Level crossing safety system developed as MSc thesis background subtraction object segmentation Own test sequences Motion field processing Classification