Ossama El Badawy, Mahmoud R. El-Sakka, Khaled Hassanein, and
Mohamed S. Kamel, "Image Data Mining From Financial Documents
Based On Wavelet Features", IEEE International Conference on
Image Processing, ICIP'2001, Vol. 1, pp. 1078 - 1081,
October 2001, Thessaloniki, Greece.
Abstract
In this paper, we present a framework for clustering and
classifying cheque images according to their payee-line
content. The features used in the clustering and
classification processes are extracted from the wavelet
domain by means of thresholding and counting of wavelet
coefficients. The feasibility of this framework is tested on a
database of 2620 cheque images. This database consists of
cheques from 10 different accounts. Each account is written
by a different person. Clustering and classification are
performed separately on each account using distance-based
techniques. We achieved correct-classification rates of 86%
and 81% for the supervised and unsupervised learning cases,
respectively. These rates are the average of
correct-classification rates obtained from the 10 different
accounts.