Text line segmentation and word recognition in a system for general writer independent handwriting recognition

Urs-Viktor Marti, H. Bunke
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引用次数: 95

Abstract

We present a system for recognizing unconstrained English handwritten text based on a large vocabulary. We describe the three main components of the system, which are preprocessing, feature extraction and recognition. In the preprocessing phase the handwritten texts are first segmented into lines. Then each line of text is normalized with respect to of skew, slant, vertical position and width. After these steps, text lines are segmented into single words. For this purpose distances between connected components are measured. Using a threshold, the distances are divided into distances within a word and distances between different words. A line of text is segmented at positions where the distances are larger than the chosen threshold. From each image representing a single word, a sequence of features is extracted. These features are input to a recognition procedure which is based on hidden Markov models. To investigate the stability of the segmentation algorithm the threshold that separates intra- and inter-word distances from each other is varied. If the threshold is small many errors are caused by over-segmentation, while for large thresholds under-segmentation errors occur. The best segmentation performance is 95.56% correctly segmented words, tested on 541 text lines containing 3899 words. Given a correct segmentation rate of 95.56%, a recognition rate of 73.45% on the word level is achieved.
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文本行分割和词识别系统中一般写作者独立的手写识别
提出了一种基于大词汇量的无约束英语手写文本识别系统。介绍了该系统的三个主要组成部分:预处理、特征提取和识别。在预处理阶段,手写文本首先被分割成行。然后,对每一行文本的倾斜、倾斜、垂直位置和宽度进行归一化。在这些步骤之后,文本行被分割成单个单词。为此,测量连接组件之间的距离。使用阈值,将距离分为单词内的距离和不同单词之间的距离。在距离大于所选阈值的位置上分割一行文本。从每个代表单个单词的图像中提取一系列特征。这些特征输入到基于隐马尔可夫模型的识别过程中。为了研究分割算法的稳定性,我们改变了分割词内和词间距离的阈值。当阈值较小时,许多错误是由过分割引起的,而当阈值较大时,则会出现分段不足错误。在包含3899个单词的541行文本上测试,最佳分割性能是95.56%的正确分割单词。在正确分割率为95.56%的情况下,在词级上的识别率为73.45%。
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