动态和竞争骨架化的装饰文字识别

P. Pandit, S. Akojwar, S. Chavan
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引用次数: 1

摘要

细化是字符识别中最重要的预处理步骤之一。但这种工艺有一定的局限性,比如速度慢、变形大。为了消除这个问题,使用骨架化,其中要识别的字符被骨架化。本文介绍了如何利用神经网络训练的骨架化算法来识别字符。在这里,为了更好地理解和实验,我们正在考虑装饰字符的类别。在这里,我们使用了一种基于神经网络的算法,通过结合AVGSOM非监督学习来确定构成骨架的代表性点和连接。该方法已应用于具有不同特征的图像及其随缩放的旋转。将所得结果与现有存储的数据库进行了比较,结果令人鼓舞,识别效率达到90%以上。最后,提出了一些结论,并展望了未来的发展方向。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Dynamic and Competitive Skeletonization for Recognition of Decorative Characters
Thinning is one of the most important preprocessing steps in the character recognition. But this process has certain limitations like low speed and deformation. To eliminate this problem, skeletonization is used, where the character to be recognized is skeletonized. This paper describes how characters are recognized by skeletonization algorithm which is trained by neural network. Here for better understanding and experimentation, we are considering categories of decorative characters. Here, we are using an algorithm based on neural network, which determines the representative points and connections making up the skeleton by combining AVGSOM non-supervised learning. The proposed method has been applied in images with different characters and their rotations along with scaling. The results obtained are compared to existing stored database, showing quite encouraging results with more than 90% recognition efficiency. Finally, some conclusions, together with some future scopes are presented.
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