Author/Authors :
Shan Li and Moon-Chuen Lee، نويسنده , , Donald Adjeroh، نويسنده ,
Abstract :
The success of content-based image retrieval (CBIR)
relies critically on the ability to find effective image features
to represent the database images. The shape of an
object is a fundamental image feature and belongs to
one of the most important image features used in CBIR.
In this article we propose a robust and effective shape
feature known as the compound image descriptor (CID),
which combines the Fourier transform (FT) magnitude
and phase coefficients with the global features. The underlying
FT coefficients have been shown analytically to
be invariant to rotation, translation, and scaling. We also
present details of the underlying innovative shape feature
extraction method. The global features, besides
being incorporated with the FT coefficients to form the
CID, are also used to filter out the highly dissimilar images
during the image retrieval process. Thus, they
serve a dual purpose of improving the accuracy and
hence the robustness of the shape descriptor, and of
speeding up the retrieval process, leading to a reduced
query response time. Experiment results show that the
proposed shape descriptor is, in general, robust to
changes caused by image shape rotation, translation,
and/or scaling. It also outperforms other recently published
proposals, such as the generic Fourier descriptor
(Zhang & Lu, 2002).