Barcode detection and recognition using Wavelet transform
Resumen
Wavelet! Ondelettes! These words seems nowadays to be brought into fashion.
Still there is no question of poetry through these synonyms. Would they become the
stock reply answers for signal processing? Originally developed in the eighties for a
geological oil layers localisation, the theory get applications in signal compression, data
visualisation, pattern recognition, etc. The appealing algorithm both rapid in o (N) and
apparently self evident with its filter banks structure made of vulgar high and low
passes, attracts sympathy. The JPEG 2000, appealed to replace the old JPEG uses
the DCT, is based on the Wavelet Transform. It allows a good maintenance of the
picture quality with artefacts less cumbersome than the blocking effects. In the same
way for Pattern Classification and Recognition, the Wavelet Transform let decompose
the time (or location)-frequency space in an advantageous way by optimising the vector
basis selection.
Consequently, the idea of the research was to make use of the wavelet theory for
a joint Picture Compression and Pattern Recognition. For this purpose, the problem
was cut into two sub-projects: Compression and Pattern Recognition. This present
document will deal with the second part. The subject was expressed by the following
words of mouth. A sequence of pictures coming from an autonomous robot equipped
with a low resolution camera should be compressed and then analysed in real time.
Within the shouted scene should be located and decoded a simple barcode from free
election standard. Of course, the robot was an application example, which was not
aimed to be concretised.
The classification problem may then be divided into the stage of feat ure extraction,
dimensionally reduction and pattern recognition. As a matter of fact, due to the
high dimension of linear picture-domain-frequency representation, its success lies upon
an appropriate form of dimensionally reduction.