One of the major objectives in multimedia technology is to be able to segment objects automatically from a video sequence, for a diverse range of applications from video surveillance and object tracking through to content-based video retrieval, coding and medical imaging. Probabilistic spatio-temporal (PST) video object segmentation has been shown to be of pivotal importance in achieving better segmentation, because it considers space, colour and time features conjointly in a spatio-temporal framework. Existing PST techniques however, incur high computational expense as they normally have to process large dimensional feature vectors. This paper addresses this problem by presenting a computationally efficient PST video object segmentation algorithm that has reduced dimensionality, with experimental results confirming that for various standard video test sequences, a significant reduction in computational complexity is achieved compared with the existing PST technique, without compromising perceptual picture quality.
Rakib AhmedGour KarmakarLaurence S. Dooley
Rakib AhmedGour KarmakarLaurence S. Dooley
Rakib AhmedLaurence S. DooleyGour Karmakar
Jisheng DangHuicheng ZhengXiaohao XuYulan Guo
Rakib AhmedGour KarmakarLaurence S. Dooley