Title :
Automatic image annotation with long distance spatial-context
Author :
Donglin Cao ; Dazhen Lin ; Jiansong Yu
Author_Institution :
Cognitive Sci. Dept., Xiamen Univ., Shenzhen, China
Abstract :
Because of high computational complexity, a long distance spatial-context based automatic image annotation is hard to achieve. Some state of art approaches in image processing, such as 2D-HMM, only considering short distance spatial-context (two neighbors) to reduce the computational complexity. However, these approaches cannot describe long distance semantic spatial-context in image. Therefore, in this paper, we propose a two-step Long Distance Spatial-context Model (LDSM) to solve that problem. First, because of high computational complexity in 2D spatial-context, we transform a 2D spatial-context into a 1D sequence-context. Second, we use conditional random fields to model the 1D sequence-context. Our experiments show that LDSM models the semantic relation between annotated object and background, and experiment results outperform the classical automatic image annotation approach (SVM).
Keywords :
computational complexity; image retrieval; 1D sequence-context; 2D spatial-context; 2D-HMM; LDSM; SVM; classical automatic image annotation approach; conditional random fields; high computational complexity; image processing; long distance semantic spatial-context; short distance spatial-context; two-step long distance spatial-context model; Computational modeling; Context; Context modeling; Educational institutions; Hidden Markov models; Semantics; Support vector machines; Conditional Random Field; Long Distance Spatial-Context; Sequence-Context;
Conference_Titel :
Computational Intelligence (UKCI), 2014 14th UK Workshop on
Conference_Location :
Bradford
DOI :
10.1109/UKCI.2014.6930181