Title :
Bar code waveform recognition using peak locations
Author :
Joseph, Eugene ; Pavlidis, Theo
Author_Institution :
R&D Dept., Symbol Technol. Inc., Bohemia, NY, USA
fDate :
6/1/1994 12:00:00 AM
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 σ 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
Keywords :
bar codes; edge detection; parameter estimation; statistical analysis; bar code waveform recognition; blurred waveforms; blurring process; edge features; histogram; noise tolerance; peak locations; statistical pattern recognition; waveform deblurring; waveform peaks; zero crossings; Computer science; Decoding; Image edge detection; Iterative algorithms; Kernel; Parameter estimation; Pattern recognition; Research and development; Table lookup; Working environment noise;
Journal_Title :
Pattern Analysis and Machine Intelligence, IEEE Transactions on