Proceedings Article10.1109/ICSMC.2009.5346389
Algorithm optimizations for low-complexity eye tracking
Shinji Yamamoto,Vasily G. Moshnyaga +1 more
- 11 Oct 2009
- pp 18-22
TL;DR: A technology capable of monitoring eyes of computer user in real time with high accuracy and very low computational overhead is defined by empirical evaluation of a number of techniques.
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Abstract: This paper investigates techniques for reducing computational complexity of tracking eyes of computer user. By empirical evaluation of a number of techniques we define a technology capable of monitoring eyes of computer user in real time with high accuracy and very low computational overhead.
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