Robust vision-based features and classification schemes for off-line handwritten digit recognition |
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Authors: | Loo-Nin Teow Author VitaeKia-Fock LoeAuthor Vitae |
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Affiliation: | School of Computing, National University of Singapore, Science Drive 2, S 117559, Singapore |
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Abstract: | We use well-established results in biological vision to construct a model for handwritten digit recognition. We show empirically that the features extracted by our model are linearly separable over a large training set (MNIST). Using only a linear discriminant system on these features, our model is relatively simple yet outperforms other models on the same data set. In particular, the best result is obtained by applying triowise linear support vector machines with soft voting on vision-based features extracted from deslanted images. |
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Keywords: | Handwritten digit recognition Biological vision Feature extraction Linear discrimination Multiclass classification |
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