Handwriting recognition systems are typically trained using publicly available databases, where data have been
collected in controlled conditions (image resolution, paper background, noise level,...). Since this is not often
the case in real-world scenarios, classification performance can be affected when novel data is presented to the
word recognition system. To overcome this problem, we present in this paper a new approach called database
adaptation. It consists of processing one set (training or test) in order to adapt it to the other set (test or training,
respectively). Specifically, two kinds of preprocessing, namely stroke thickness normalization and pixel intensity
normalization are considered. The advantage of such approach is that we can re-use the existing recognition
system trained on controlled data. We conduct several experiments with the Rimes 2011 word database and
with a real-world database. We adapt either the test set or the training set. Results show that training set
adaptation achieves better results than test set adaptation, at the cost of a second training stage on the adapted
data. Accuracy of data set adaptation is increased by 2% to 3% in absolute value over no adaptation.
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