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DFKI launches the DigiPen Spin-Off (real-time digital pen data acquisition): also visit the CeBit booth, March 5-9, 2013, hall 4, C26 (German Telekom) and hall 9, S50 (DFKI)

Published by Max Biwersi on March 1, 2013March 1, 2013

DigiPen

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