Abstract:
Markov stationary features (MSF) based on homogeneous Markov chain model for
content-based image retrieval (CBIR) is getting popularity nowadays. It not only
considers the distribution of colors that the histogram method does, but also
characterizes the spatial co-occurrence of histogram patterns. However, handling a
large scale database of images with large degree of heterogeneity, a simple MSF
method is not sufficient to discriminate the images. The method does not capture
sufficient spatial co-occurrence information as required for large databases. To
overcome the shortcoming in this research, two extended methods namely multichannel
nonhomogencous MSF (MCN-MSF) and multi-resolution
nonhomogeneous MSF (MRN-MSF) based on original MSF are proposed. In both
cases, the concept of nonhomogeneous Markov chain model is exploited to
construct the features. For the first method, we incorporate spatial co-occurrence
structures of different color channels of an image by applying the time
inhomogeneous (nonhomogeneous) Markov chain model. For the second method,
by exploiting the similar nonhomogeneous model, we incorporate the spatial cooccu1Tence
information more consistently by mapping the image with different
resolution. Without compromising effectiveness and robustness, the methods
proposed in this paper keeps the features level simplicity. Widely recognized
WANGl000 and Corell0800 databases arc used to evaluate and compare the
performances of the proposed algorithms with the existing methods. The
experimental results show that both methods significantly improve the
performances compare to the existing methods. The results also prove that second
method is more effective for large databases.
Description:
This Thesis is Submitted to the Department of Computer Science and Engineering , University of Rajshahi, Rajshahi, Bangladesh for The Degree of Doctor of Philosophy (PhD)