Applying Discriminatively Optimized Feature Transform for HMM-based Off-Line Handwriting Recognition

Jin Chen, Bing Zhang, Huaigu Cao, R. Prasad, P. Natarajan
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引用次数: 9

Abstract

Feature extraction is an important step in off-line handwriting recognition systems to represent raw handwriting in a low-dimensional, tractable feature space. Traditionally, linear feature transforms such as Principle Component Analysis (PCA), Linear Discriminative Analysis (LDA) are commonly used. The assumptions they make, however, usually cannot be satisfied in practice and thus the best performance is not obtained. In this paper, we apply the Region-Dependent non-linear feature Transform (RDT) to handwriting recognition. RDT is one type of non-linear feature transforms which captures the discriminating power much better than traditional linear ones. We justify the effectiveness of RDT on handwriting features using an HMM-based handwriting recognition system on an Arabic handwriting dataset, which consists of 38K pages of handwriting, over 3M handwritten words. Experimental results show that RDT is able to decrease the word error rates (WERs) relatively by 4% to 7% with statistical significance, comparing to two LDA-based baseline systems.
判别优化特征变换在hmm离线手写识别中的应用
特征提取是离线手写识别系统的一个重要步骤,目的是在低维、易处理的特征空间中表示原始手写。传统上常用的是线性特征变换,如主成分分析(PCA)、线性判别分析(LDA)。然而,他们所做的假设通常不能在实践中得到满足,因此无法获得最佳性能。本文将区域相关非线性特征变换(RDT)应用于手写识别。RDT是一种非线性特征变换,它比传统的线性特征变换具有更好的判别能力。我们使用基于hmm的手写识别系统在一个阿拉伯手写数据集上证明了RDT对手写特征的有效性,该数据集包含38K页的手写,超过3M个手写单词。实验结果表明,与两种基于lda的基线系统相比,RDT能够将单词错误率(wer)相对降低4% ~ 7%,且具有统计学显著性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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