1 research outputs found

    Shape Matching Using GAT Correlation against Nonlinear Distortion and its Application to Handwritten Numeral Recognition

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    This paper addresses the problem of to what extent linear transformation can alleviate nonlinear distortion. We investigate a technique of global affine transformation (GAT) correlation to absorb linear distortion between gray-scale images. Features used in GAT correlation are occurrence probabilities of black pixels or gradients. Experiments using the handwritten numeral database IPTP CDROM1B show that the entropy of GAT-superimposed images decreases by around 15%. Furthermore, gray-level-based GAT correlation improves the recognition rate from 85.78 % to 91.01%, while gradient-based GAT correlation improves the recognition rate from 91.80 % to 94.02%. These results show that GAT correlation has a marked effect of improving both shape matching and discrimination abilities by extracting linear distortion from nonlinear one. 1
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