The effect of large training set sizes on online Japanese Kanji and English cursive recognizers

H. Rowley, Manish Goyal, John Bennett
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引用次数: 26

Abstract

Much research in handwriting recognition has focused on how to improve recognizers with constrained training set sizes. This paper presents the results of training a nearest-neighbor based online Japanese Kanji recognizer and a neural-network based online cursive English recognizer on a wide range of training set sizes, including sizes not generally available. The experiments demonstrate that increasing the amount of training data improves the accuracy, even when the recognizer's representation power is limited.
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大训练集对在线日语汉字和英语草书识别器的影响
手写识别的许多研究都集中在如何在训练集大小受限的情况下改进识别器。本文介绍了基于最近邻的在线日语汉字识别器和基于神经网络的在线草书英语识别器在广泛的训练集大小上的训练结果,包括通常不可用的大小。实验表明,即使识别器的表示能力有限,增加训练数据量也能提高准确率。
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Bigram-based post-processing for online handwriting recognition using correctness evaluation The effect of large training set sizes on online Japanese Kanji and English cursive recognizers Analysis of stability in hand-written dynamic signatures Recognition of courtesy amounts on bank checks based on a segmentation approach Vind(x): using the user through cooperative annotation
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