Abstract :
In our previous work, illumination invariant object
recognition was achieved by normalizing the three color bands.We
further employed the compressed histogram of the chromaticity to
arrive at a valuable representation of an object which can facilitate
high retrieval accuracy. The first shortcoming of this method
lies in the usage of a uniform quantization scheme in obtaining the
chromaticity, which is not in agreement with the perception of the
human vision system. In this paper, we develop an approach using
the CIE UCS transform to circumvent this problem. Second, instead
of using uncompressed images to achieve the illumination invariant
indexing and retrieval, we carry out our indexing process
directly in the DCT domain by using several coefficients from each
macro-block. Third, in light of the special properties of the normalized
chromaticity histogram frames, the foundation of the ensuing
low-pass filtering, an additional step is inserted to render this
frame smoother thus resulting in a better data reduction. Fourth,
in order to facilitate efficient retrieval during data query phase,
which is of utmost importance in digital libraries, the 36-dimensional
model vectors as the indices of model images in digital libraries
are clustered by use of vector quantization techniques. This
clustering strategy reduces the searching space by order of magnitude.
Desirable results have been observed from our experiments
using the proposed color-object-indexing/retrieval algorithm.
Keywords :
Content-based object indexing , digital libraries , illumination invariance , vectorquantization. , statistics of natural images