Due to the rapid development of multimedia technology, huge amount of
multimedia information has been generated in today multimedia applications.
Examples include the advancement in digital photography technology, 3-D graphics
and virtual reality technologies. This, in turn, effective as well as efficient
management of these systems has become a critical issue. It has been well
documented that simple textual annotations are often ambiguous and inadequate for
multimedia, information retrieval or classification. Consequently, an intensive research
area has emerged called content-based retrieval (CBR) in which the main idea is to
retrieve information semantically. In other words, the retrieval or classification is
done based on the underlying content of the multimedia entity.
Feature extraction and indexing are the fundamental elements for CBR
applications. Generally, features are extracted to represent the underlying content and
use as signatures for retrieval or classification purposes. For example, features such as
color, shape and texture are usually used to capture the characteristic of image content
for contented-based image retrieval. Normal vector orientation angles of the
individual polygons in the 3-D model are also usually used as features for
characterizing 3-D models. Besides, form of representation of extracted features is
also an important issue. Histogram has been widely used for such propose. One of the
main reasons is that it can be computed easily and efficiently. In addition, histogram
is able to summarize the statistics of the extracted features that can use to reduce data
dimension. Typically, it is used as feature vector for retrieval or classification
purposes.
However, approximate representation of some extracted features which in the
form of histogram may not be able to characterize the underlying content of the
multimedia information accurately. Therefore, we expected there should be a certain
transformation that able to transform the histogram in such a way that the content
characterization capability can be improved. With such expectation and a large search
space but without prior knowledge about the form of transformation, we investigate
the effectiveness of applying Evolutionary Computation to search for such suitable
transformation. Specifically, we chose Genetic Algorithms (GA) and Evolution
Strategies (ES) for the search process. To evaluate the approach, we focus on
multimedia information categorization problem. We apply the approach to compress-domain images and 3D head models categorization problems.
Date of Award | 4 Oct 2004 |
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Original language | English |
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Awarding Institution | - City University of Hong Kong
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Supervisor | Hau San WONG (Supervisor) & Ho Shing Horace IP (Co-supervisor) |
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- Multimedia systems
- Evolutionary computation
Feature transformation using evolutionary computation for multimedia information content characterization
CHIU, C. I. (Author). 4 Oct 2004
Student thesis: Master's Thesis