Title :
Sequence Multi-Labeling: A Unified Video Annotation Scheme With Spatial and Temporal Context
Author :
Li, Yuanning ; Tian, Yonghong ; Duan, Ling-Yu ; Yang, Jingjing ; Huang, Tiejun ; Gao, Wen
Author_Institution :
Inst. of Comput. Technol., Chinese Acad. of Sci., Beijing, China
Abstract :
Automatic video annotation is a challenging yet important problem for content-based video indexing and retrieval. In most existing works, annotation is formulated as a multi-labeling problem over individual shots. However, video is by nature informative in spatial and temporal context of semantic concepts. In this paper, we formulate video annotation as a sequence multi-labeling (SML) problem over a shot sequence. Different from many video annotation paradigms working on individual shots, SML aims to predict a multi-label sequence for consecutive shots in a global optimization manner by incorporating spatial and temporal context into a unified learning framework. A novel discriminative method, called sequence multi-label support vector machine (SVMSML), is accordingly proposed to infer the multi-label sequence for a given shot sequence. In SVMSML, a joint kernel is employed to model the feature-level and concept-level context relationships (i.e., the dependencies of concepts on the low-level features, spatial and temporal correlations of concepts). A multiple-kernel learning (MKL) algorithm is developed to optimize the kernel weights of the joint kernel as well as the SML score function. To efficiently search the desirable multi-label sequence over the large output space in both training and test phases, we adopt an approximate method to maximize the energy of a binary Markov random field (BMRF). Extensive experiments on TRECVID´05 and TRECVID´07 datasets have shown that our proposed SVMSML gains superior performance over the state-of-the-art.
Keywords :
Markov processes; content-based retrieval; learning (artificial intelligence); optimisation; search problems; support vector machines; temporal databases; video retrieval; visual databases; SML score function; SVMSML; TRECVID´05; TRECVID´05 dataset; TRECVID´07 dataset; binary Markov random field; content based video indexing; content based video retrieval; global optimization manner; multiple kernel learning algorithm; novel discriminative method; sequence multilabel support vector machine; spatial context; temporal context; unified learning framework; video annotation scheme; Computers; Correlation; Electronic mail; Facsimile; Feature extraction; Hidden Markov models; Laboratories; Permission; Research and development; Spatial resolution; Sequence multi-labeling; spatial correlation; temporal correlation; video annotation;
Journal_Title :
Multimedia, IEEE Transactions on
DOI :
10.1109/TMM.2010.2066960