A Learning State Space Model for Image Retrieval
Journal
EURASIP Journal on Advances in Signal Processing
Date Issued
2007
Date
2007
Author(s)
Abstract
This paper proposes an approach based on a state-space model for learning the user concepts in image retrieval. We first design a scheme of region-based image representation based on concept units, which are integrated with different types of feature spaces and with different region scales of image segmentation. The design of the concept units aims at describing similar characteristics at a certain perspective among relevant images. We present the details of our proposed approach based on a state-space model for interactive image retrieval, including likelihood and transition models, and we also describe some experiments that show the efficacy of our proposed model. This work demonstrates the feasibility of using a state-space model to estimate the user intuition in image retrieval.
Other Subjects
Image retrieval; Image segmentation; Learning systems; Image representation; Likelihood; Transition models; State space methods
Type
journal article
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