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Improved hand-written character recognition thanks to a new geometric distortion method

机译:由于新的几何失真方法,改善了手写字符识别

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A new character distortion method for off-line hand-written character recognition is presented. By allowing one to artificially create new characters images from real ones, this method can be applied to increase the diversity of the database that is used for training a classifier, which can then result in a significant improvement of its generalisation ability. The principle of the proposed method is to apply linear geometrical distortions in combination, to a bi-dimensional sampling grid, which is then used to resample the character image. The proposed method only depends on a few parameters, which leads to those ones being very easily set out, so as to ensure that enough new useful information will be provided to the classifier, as well as to avoid the creation of over-noisy images. The tests that were carried out on hand-written digits extracted from the NIST3 database have shown that this method allows one to reduce significantly the misclassification error rate; by training a multilayer perceptron as a classifier, the recognition rate obtained on an independent test set has been increased from 97.0% to 98.1%.
机译:提出了一种新的字符失真方法,用于离线手写字符识别。通过允许人为从真实创建新的字符图像,可以应用这种方法来增加用于训练分类器的数据库的分集,然后可以显着提高其泛化能力。所提出的方法的原理是将组合应用线性几何失真,以双维采样网格,然后用于重新采样字符图像。该方法仅取决于几个参数,这导致那些非常容易被设置的参数,以确保将提供足够的新有用信息,以及避免创建过噪声图像。从NIST3数据库中提取的手写数字上执行的测试已经表明,该方法允许其中一个以显着降低错误分类错误率;通过培训多层的Perceptron作为分类器,在独立测试组上获得的识别率已从97.0%增加到98.1%。

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