Title of article :
A Unified Framework for Image Retrieval Using Keyword and Visual Features
Author/Authors :
F. Jing، نويسنده , , M. Li، نويسنده , , H.-J. Zhang، نويسنده , , and B. Zhang، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2005
Abstract :
In this paper, a unified image retrieval framework
based on both keyword annotations and visual features is proposed.
In this framework, a set of statistical models are built based
on visual features of a small set of manually labeled images to represent
semantic concepts and used to propagate keywords to other
unlabeled images. These models are updated periodically when
more images implicitly labeled by users become available through
relevance feedback. In this sense, the keyword models serve the
function of accumulation and memorization of knowledge learned
from user-provided relevance feedback. Furthermore, two sets of
effective and efficient similarity measures and relevance feedback
schemes are proposed for query by keyword scenario and query
by image example scenario, respectively. Keyword models are
combined with visual features in these schemes. In particular,
a new, entropy-based active learning strategy is introduced to
improve the efficiency of relevance feedback for query by keyword.
Furthermore, a new algorithm is proposed to estimate
the keyword features of the search concept for query by image
example. It is shown to be more appropriate than two existing
relevance feedback algorithms. Experimental results demonstrate
the effectiveness of the proposed framework.
Keywords :
Relevancefeedback , Image retrieval , support vector machine (SVM). , keyword propagation
Journal title :
IEEE TRANSACTIONS ON IMAGE PROCESSING
Journal title :
IEEE TRANSACTIONS ON IMAGE PROCESSING