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Commenting on the win, SoC Dean Professor Ooi Beng Chin said: "SoC
is glad to share the sense of achievement chalked up by our
colleague, Professor Tan Chew Lim at DIBCO. The win at the
international event is testament to the cutting-edge research that
Prof Tan has been performing in the area of image and text
recognition. Our School celebrates with Prof Tan his pursuit of
excellence."
Prof Tan and Dr Lu’s algorithm had competed against 43 others from
research organisations in Europe, US, Australia and Asia. It
produced the best detection performance, winning it the coveted top
spot. The algorithms were applied on a testing dataset which
consisted of five machine printed and five handwritten images
resulting in a total of 10 images for which the associated
human-segmented (text) images were built for the evaluation.
Human-segmented images act as the benchmark to evaluate the accuracy
of the designed computer algorithms.The selection of the images in
the dataset was made so that it contains representative degradations
as in the real world that appears frequently (e.g., variable
background intensity, shadows, smear, smudge, low contrast,
bleed-through and show-through).
DIBCO 2009 is the first international document image binarisation
contest organized in conjunction with the 10th International
Conference on Document Analysis and Recognition (ICDAR 2009). The
general objective of the contest is to identify current advances in
document image binarisation using established evaluation performance
measures. Document image binarisation is an important step in the
document image analysis and recognition, a technology often used in
Optical Character Recognition software used to drive scanning
software.
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