Offline Handwritten Devanagari Word Recognition: A Holistic Approach Based on Directional Chain Code Feature and HMM

Bikash Shaw, S. K. Parui, M. Shridhar
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引用次数: 64

Abstract

A hidden Markov model (HMM) based approach is proposed for recognition of offline handwritten Devanagari words. The histogram of chain-code directions in the image-strips, scanned from left to right by a sliding window, is used as the feature vector. A continuous density HMM is proposed to recognize a word image. In our approach the states of the HMM are not determined a priori, but are determined automatically based on a database of handwritten word images. A handwritten word image is assumed to be a string of several image frame primitives. These are in fact the states of the proposed HMM and are found using a certain mixture distribution. One HMM is constructed for each word. To classify an unknown word image, its class conditional probability for each HMM is computed. The class that gives highest such probability is finally selected.
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离线手写体Devanagari词识别:基于方向链码特征和HMM的整体方法
提出了一种基于隐马尔可夫模型(HMM)的离线手写体Devanagari词识别方法。用滑动窗口从左向右扫描图像条中的链码方向直方图作为特征向量。提出了一种连续密度HMM来识别单词图像。在我们的方法中,HMM的状态不是先验地确定的,而是基于手写单词图像数据库自动确定的。假设一个手写的单词图像是由几个图像框架原语组成的字符串。这些实际上是所提出的HMM的状态,并且是使用某种混合分布找到的。为每个单词构造一个HMM。为了对未知词图像进行分类,计算每个HMM的分类条件概率。最后选择给出最大概率的类。
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