Title of article :
Studying Digital Imagery of Ancient Paintings by Mixtures of Stochastic Models
Author/Authors :
J. Li and J. Z. Wang، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2004
Abstract :
This paper addresses learning-based characterization
of fine art painting styles. The research has the potential to
provide a powerful tool to art historians for studying connections
among artists or periods in the history of art. Depending on
specific applications, paintings can be categorized in different
ways. In this paper, we focus on comparing the painting styles
of artists. To profile the style of an artist, a mixture of stochastic
models is estimated using training images. The two-dimensional
(2-D) multiresolution hidden Markov model (MHMM) is used
in the experiment. These models form an artist’s distinct digital
signature. For certain types of paintings, only strokes provide
reliable information to distinguish artists. Chinese ink paintings
are a prime example of the above phenomenon; they do not have
colors or even tones. The 2-D MHMM analyzes relatively large
regions in an image, which in turn makes it more likely to capture
properties of the painting strokes. The mixtures of 2-D MHMMs
established for artists can be further used to classify paintings
and compare paintings or artists. We implemented and tested
the system using high-resolution digital photographs of some of
China’s most renowned artists. Experiments have demonstrated
good potential of our approach in automatic analysis of paintings.
Our work can be applied to other domains.
Keywords :
Art painting , Image classification , Image retrieval , mixture of stochastic models , 2-D multiresolution hidden Markovmodel.
Journal title :
IEEE TRANSACTIONS ON IMAGE PROCESSING
Journal title :
IEEE TRANSACTIONS ON IMAGE PROCESSING