基于多个深度神经网络的泰文手写离线识别

N. Nimsuk, Nichakorn Thumpaiboon, Wilasinee Phuangsri
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引用次数: 0

摘要

手写字符识别在许多语言中都是一项具有挑战性的任务。然而,语言有自己的特点。在泰语中,虽然它在水平方向上总是从左到右书写,但在垂直方向上字符对齐可以达到四层,这与汉语,英语,日语等几种语言不同。本文提出了一种基于迁移学习的离线泰语手写识别方法。在这项工作中,我们使用VGGNet-16作为预训练网络。该系统包含两个独立的网络,用于识别基本级别和从单词中分割的其余级别的字符。虽然由于泰文中存在重叠字符分割和部分相邻字符组合歧义的问题,仍然必须保持单词中的字符间距。该方法在泰文手写体识别中具有较高的准确率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Offline Handwriting Recognition of Thai Characters Using Multiple Deep Neural Networks
Handwritten character recognition is a challenge task in many languages. However, languages have their own characteristics. In Thai language, although it is always written from left to right in horizontal direction, the character alignment can be up to four levels in a vertical direction, which is different from several languages such as Chinese, English, Japanese, etc. This work proposed a method for offline handwritten recognition in Thai language based on transfer learning. In this work, we used VGGNet-16 as a pretrained network. The system contains two separate networks for recognizing the characters at base level and the remaining levels which are segmented from a word. Although the character spacing in a word still must be kept enough due to the problems of the segmentation of overlapping characters and the ambiguity of some combinations of adjacent characters in Thai scripts. The proposed method performed quite high accuracies in Thai handwritten recognition.
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