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Project

Big Heterogeneous Data Sensing and Processing in Computer Vision

We focus on building a new information-theoretic framework in computer vision for sensing and analysis of Big Data by upgrading recent results from homogeneous to heterogeneous data types. This include extending the compressed sensing framework towards handling prior information, structured noise and erroneous measurements, and towards applications for improved image reconstruction and content analysis in biomedical and remote sensing applications.

Date:1 Mar 2016 →  31 Aug 2019
Keywords:Big Data, Compressed sensing, Signal recovery, remote sensing, Signal- and image processing
Disciplines:Modelling, Physical geography and environmental geoscience, Multimedia processing, Geomatic engineering, Communications technology, Biological system engineering, Signal processing