Handwritten Bank Check Recognition of Courtesy Amounts
Author(s)
Palacios, Rafael; Gupta, Amar; Wang, Patrick
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In spite of rapid evolution of electronic techniques, a number of large-scale applications continue to rely on the use
of paper as the dominant medium. This is especially true for processing of bank checks. This paper examines the
issue of reading the numerical amount field. In the case of checks, the segmentation of unconstrained strings into
individual digits is a challenging task because of connected and overlapping digits, broken digits, and digits that are
physically connected to pieces of strokes from neighboring digits. The proposed architecture involves four stages:
segmentation of the string into individual digits, normalization, recognition of each character using a neural network
classifier, and syntactic verification. Overall, this paper highlights the importance of employing a hybrid architecture
that incorporates multiple approaches to provide high recognition rates.
Date issued
2004-12-10Series/Report no.
MIT Sloan School of Management Working Paper;4461-04
Keywords
Handwritten checks, Reading of unconstrained handwritten material, neural network