Title :
Multi-layer temporal graphical model for head pose estimation in real-world videos
Author :
Demirkus, Meltem ; Precup, Doina ; Clark, James J. ; Arbel, Tal
Abstract :
Head pose estimation has been receiving a lot of attention due to its wide range of possible applications. However, most approaches in the literature have focused on head pose estimation in controlled environments. Head pose estimation has recently begun to be applied to real-world environments. However, the focus has been on estimation from single images or video frames. Furthermore, most approaches frame the problem as classification into a set of coarse pose bins, rather than performing continuous pose estimation. The proposed multi-layer probabilistic temporal graphical model robustly estimates continuous head pose angle while leveraging the strengths of multiple features into account. Experiments performed on a large, real-world video database show that our approach not only significantly outperforms alternative head pose approaches, but also provides a pose probability assigned at each video frame, which permits robust temporal, probabilistic fusion of pose information over the entire video sequence.
Keywords :
feature extraction; frame based representation; image sequences; pose estimation; probability; coarse pose bins; continuous head pose angle; controlled environments; head pose estimation; multilayer probabilistic temporal graphical model; multilayer temporal graphical model; multiple features; pose information; probabilistic fusion; real-world videos; robust temporal fusion; single images; video database; video frames; video sequence; Estimation; Face; Feature extraction; Graphical models; Magnetic heads; Videos; Head pose; graphical model; probabilistic; real-world; video;
Conference_Titel :
Image Processing (ICIP), 2014 IEEE International Conference on
Conference_Location :
Paris
DOI :
10.1109/ICIP.2014.7025686