Title :
Semiautomatic visual-attention modeling and its application to video compression
Author :
Gitman, Yury ; Erofeev, Mikhail ; Vatolin, Dmitriy ; Andrey, Bolshakov ; Alexey, Fedorov
Author_Institution :
Lomonosov Moscow State Univ., Moscow, Russia
Abstract :
This research aims to sufficiently increase the quality of visual-attention modeling to enable practical applications. We found that automatic models are significantly worse at predicting attention than even single-observer eye tracking. We propose a semiautomatic approach that requires eye tracking of only one observer and is based on time consistency of the observer´s attention. Our comparisons showed the high objective quality of our proposed approach relative to automatic methods and to the results of single-observer eye tracking with no postprocessing. We demonstrated the practical applicability of our proposed concept to the task of saliency-based video compression.
Keywords :
data compression; gaze tracking; video coding; saliency-based video compression; semiautomatic visual-attention modeling quality; single-observer eye tracking; time consistency; Bit rate; Databases; Educational institutions; Observers; Pipelines; Video compression; Visualization; Eye-tracking; H.264; Saliency; Saliency-aware compression; Visual attention;
Conference_Titel :
Image Processing (ICIP), 2014 IEEE International Conference on
Conference_Location :
Paris
DOI :
10.1109/ICIP.2014.7025220