Ghaziasgar, MehrdadJames Connan, JamesBrown, Dane2014-07-082024-10-302014-07-082024-10-302013https://hdl.handle.net/10566/16969>Magister Scientiae - MScThe SASL project is in the process of developing a machine translation system that can translate fully-fledged phrases between SASL and English in real-time. To-date, several systems have been developed by the project focusing on facial expression, hand shape, hand motion, hand orientation and hand location recognition and estimation. Achmed developed a highly accurate upper body pose recognition and estimation system. The system is capable of recognizing and estimating the location of the arms from a twodimensional video captured from a monocular view at an accuracy of 88%. The system operates at well below real-time speeds. This research aims to investigate the use of optimizations and parallel processing techniques using the CUDA framework on Achmed’s algorithm to achieve real-time upper body pose recognition and estimation. A detailed analysis of Achmed’s algorithm identified potential improvements to the algorithm. Are- implementation of Achmed’s algorithm on the CUDA framework, coupled with these improvements culminated in an enhanced upper body pose recognition and estimation system that operates in real-time with an increased accuracy.enPose recognition and estimationGraphics processing unitCompute unified device architectureFace detectionSkin detectionBackground subtractionMorphological operationsHaar featuresSupport vector machineBlenderFaster upper body pose recognition and estimation using compute unified device architectureThesisUniversity of Western Cape