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Showing papers by "Theodosios Pavlidis published in 1994"


Journal ArticleDOI
TL;DR: A method for the recognition of multifont printed characters is proposed, giving emphasis to the identification of structural descriptions of character shapes using prototypes, accomplishing robustness to noise with less than two prototypes per class, on average.
Abstract: A method for the recognition of multifont printed characters is proposed, giving emphasis to the identification of structural descriptions of character shapes using prototypes. Noise and shape variations are modeled as series of transformations from groups of features in the data to features in each prototype. Thus, the method manages systematically the relative distortion between a candidate shape and its prototype, accomplishing robustness to noise with less than two prototypes per class, on average. The method uses a flexible matching between components and a flexible grouping of the individual components to be matched. A number of shape transformations are defined, including filling of gaps, so that the method handles broken characters. Also, a measure of the amount of distortion that these transformations cause is given. Classification of character shapes is defined as a minimization problem among the possible transformations that map an input shape into prototypical shapes. Some tests with hand-printed numerals confirmed the method's high robustness level. >

166 citations


Journal ArticleDOI
TL;DR: A new feature is presented that is more resistant to the blurring process, the image, and waveform peaks, and the recognition algorithm showed a 43% performance improvement over current commercial bar code reading equipment.
Abstract: Traditionally, zero crossings of the second derivative provide edge features for the classification of blurred waveforms. The accuracy of these edge features deteriorates in the case of severely blurred images. In this paper, a new feature is presented that is more resistant to the blurring process, the image, and waveform peaks. In addition, an estimate of the standard deviation /spl sigma/ of the blurring kernel is used to perform minor deblurring of the waveform. Statistical pattern recognition is used to classify the peaks as bar code characters. The noise tolerance of this recognition algorithm is increased by using an adaptive, histogram-based technique to remove the noise. In a bar code environment that requires a misclassification rate of less than one in a million, the recognition algorithm showed a 43% performance improvement over current commercial bar code reading equipment. >

112 citations


Journal ArticleDOI
TL;DR: A hierarchical character recognition scheme is proposed that first attempts to recognize various broad character classes, then triggers a set of highly specific routines suitable for the recognition of particular characters or classes of characters.

41 citations