Analysis of Local Data Patterns by Local Adaptive Color Mapping


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MITTELSTÄDT, Sebastian, Andreas STOFFEL, Tobias SCHRECK, Daniel A. KEIM, 2014. Analysis of Local Data Patterns by Local Adaptive Color Mapping. InfoVis 2014 : 2014 IEEE Conference on Information Visualization. Paris, 9. Nov 2014 - 14. Nov 2014. In: InfoVis 2014 : 2014 IEEE Conference on Information Visualization ; Poster Paper

@inproceedings{Mittelstadt2014Analy-30245, title={Analysis of Local Data Patterns by Local Adaptive Color Mapping}, year={2014}, booktitle={InfoVis 2014 : 2014 IEEE Conference on Information Visualization ; Poster Paper}, author={Mittelstädt, Sebastian and Stoffel, Andreas and Schreck, Tobias and Keim, Daniel A.} }

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