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Maximum Entropy Regularization and Chinese Text Recognition

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arxiv 2007.04651 v1 pith:4ANJYRJY submitted 2020-07-09 cs.CV

Maximum Entropy Regularization and Chinese Text Recognition

classification cs.CV
keywords chineserecognitionregularizationtextentropyfine-grainedmaximummodel
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Chinese text recognition is more challenging than Latin text due to the large amount of fine-grained Chinese characters and the great imbalance over classes, which causes a serious overfitting problem. We propose to apply Maximum Entropy Regularization to regularize the training process, which is to simply add a negative entropy term to the canonical cross-entropy loss without any additional parameters and modification of a model. We theoretically give the convergence probability distribution and analyze how the regularization influence the learning process. Experiments on Chinese character recognition, Chinese text line recognition and fine-grained image classification achieve consistent improvement, proving that the regularization is beneficial to generalization and robustness of a recognition model.

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