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Neural Networks for the Recognition of Traditional Chinese Handwriting

机译:神经网络认识中国传统手写

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In recent years, Support Vector Machine [1]has been a popular machine learning algorithm. SVM has the better recognize capability and faster calculation speed than the general neural network. Furthermore, it does not have the over-learning situation. There are so many researches prove that SVM have good performance of recognition. Probabilistic neural network (PNN) is a kind of neural network based on Bayesian decision theory. PNN's highly regarded due to its short training time, and also, it does not have the iterative process. In this paper, we used PNN and SVM as the recognition of Traditional Chinese handwriting tool. The database were made of 20 people's hand-writing in Traditional Chinese, according to everyone's handwriting habits and their using of different quantization methods, in order to explore the feasibility of using handwriting recognition as an identification identity. Experimental results show that the best rate to use SVM to recognize is 75% while the best rate for PNN best rate is 80%.
机译:近年来,支持向量机[1]一直是一种流行的机器学习算法。 SVM具有比通用神经网络更好的识别能力和更快的计算速度。此外,它没有过度学习的情况。有很多研究证明了SVM具有良好的识别性能。概率神经网络(PNN)是一种基于贝叶斯决策理论的神经网络。由于其短暂的培训时间,PNN高度重视,而且,它没有迭代过程。在本文中,我们使用PNN和SVM作为传统汉语手写工具的识别。根据每个人的手写习惯及其使用不同量化方法,数据库是由传统中文的20人手写的手写,以探讨使用手写识别作为识别标识的可行性。实验结果表明,使用SVM识别的最佳速率为75%,而PNN最佳速率的最佳速率为80%。

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