首页> 外文期刊>International Journal of Pattern Recognition and Artificial Intelligence >OFFLINE HANDWRITING RECOGNITION USING SYNTHETIC TRAINING DATA PRODUCED BY MEANS OF A GEOMETRICAL DISTORTION MODEL
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OFFLINE HANDWRITING RECOGNITION USING SYNTHETIC TRAINING DATA PRODUCED BY MEANS OF A GEOMETRICAL DISTORTION MODEL

机译:利用几何变形模型产生的综合训练数据进行离线手写识别

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摘要

A perturbation model for the generation of synthetic textlines from existing cursively handwritten lines of text produced by human writers is presented. The goal of synthetic textline generation is to improve the performance of an offline cursive handwriting recognition system by providing it with additional training data. It can be expected that by adding synthetic training data the variability of the training set improves, which leads to a higher recognition rate. On the other hand, synthetic training data may bias a recognizer towards unnatural handwriting styles, which could lead to a deterioration of the recognition rate. In this paper the proposed perturbation model is evaluated under several experimental conditions, and it is shown that significant improvement of the recognition performance is possible even when the original training set is large and the textlines are provided by a large number of different writers.
机译:提出了一种从人类作家现有的草书手写文本行生成合成文本行的扰动模型。合成文本行生成的目的是通过为脱机草书手写识别系统提供其他训练数据来提高其性能。可以预料,通过添加综合训练数据,训练集的可变性将得到改善,从而导致更高的识别率。另一方面,综合训练数据可能会使识别器偏向不自然的笔迹样式,这可能导致识别率下降。本文在几种实验条件下对提出的摄动模型进行了评估,结果表明,即使原始训练集很大且文本行由大量不同的作者提供,识别性能也有可能得到显着改善。

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