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Filters: Author is Dodds, Reg  [Clear All Filters]
2018-12-03
Deaney, Waleed, Venter, Isabella, Ghaziasgar, Mehrdad, Dodds, Reg.  2017.  A Comparison of Facial Feature Representation Methods for Automatic Facial Expression Recognition. Proceedings of the South African Institute of Computer Scientists and Information Technologists. :10:1–10:10.

A machine translation system that can convert South African Sign Language video to English audio or text and vice versa in real-time would be immensely beneficial to the Deaf and hard of hearing. Sign language gestures are characterised and expressed by five distinct parameters: hand location; hand orientation; hand shape; hand movement and facial expressions. The aim of this research is to recognise facial expressions and to compare the following feature descriptors: local binary patterns; compound local binary patterns and histogram of oriented gradients in two testing environments, a subset of the BU3D-FE dataset and the CK+ dataset. The overall accuracy, accuracy across facial expression classes, robustness to test subjects, and the ability to generalise of each feature descriptor within the context of automatic facial expression recognition are analysed as part of the comparison procedure. Overall, HOG proved to be a more robust feature descriptor to the LBP and CLBP. Furthermore, the CLBP can generally be considered to be superior to the LBP, but the LBP has greater potential in terms of its ability to generalise.