M. L. Afakh, Anhar Risnumawan, M. Anggraeni, Mohamad Nasyir Tamara, E. S. Ningrum
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引用次数: 15
摘要
Aksara jawa是一个古老的爪哇文字,自17世纪以来一直使用。这种文字大多写在石头上,用来描述历史或命名,如地点、婚礼、墓碑等。然而这一特点却逐渐被人们所忽视。因此,保护这种濒临消失的文化遗产是极其重要的。在本文中,作为将视觉信息保存和转换为文本的一步,我们在场景图像中开发了Aksara Jawa文本检测系统,该系统采用深度卷积神经网络来定位Aksara Jawa文本的出现。这种方法主要不同于现有的Aksara java文本作品,后者使用手工制作的特征并明确地学习分类器。该方法结合特征和分类器进行学习,并利用反向传播技术同时获取参数。然后生成文本置信度图,然后生成边界框,该边界框是估计和形成的,以指示文本行的出现。实验结果表明,Aksara java的文本分析效果令人鼓舞。
Aksara jawa text detection in scene images using convolutional neural network
Aksara jawa is an ancient Javanese character, which has been used since 17th century. The character is mostly written on stones to describe history or naming such as places, wedding, tombstones, etc. This character is however gradually ignored by people. Thus, it is extremely important to preserve this near loss heritage culture. In this paper, as a step toward preserving and converting visual information into text, we develop Aksara Jawa text detection system in scene images employing deep convolutional neural network to localize the occurrence of Aksara Jawa text. This method mainly differs from the existing Aksara Jawa text works that employ manually hand-crafted features and explicitly learn a classifier. The features and classifier of this method are jointly learned from which the back-propagation technique is employed to obtain parameters simultaneously. A text confidence map is then produced followed by bounding boxes formation which is estimated and formed to indicate the occurrence of text lines. Experiments show encouraging result for the benefit of text analysis on Aksara Jawa.