基于深度神经网络迁移学习的佛法峨山文字分类

Narit Hnoohom, Sumeth Yuenyong
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引用次数: 1

摘要

我们通过微调在ImageNet数据集上训练的Inception V3深度神经网络,提出了一种Dhamma Esan字符的图像分类方法。Dhamma Esan是泰国东北部地区使用的一种传统字母,主要是为了记录佛教经文而写在香叶上。保存这些历史文献需要对字母表中的字符进行分类的能力,以便于数字索引和搜索,以及帮助任何人试图阅读它们。我们的数据集包含超过70,000个达摩依山的字符图像,比以前的任何工作都要大得多。十重交叉验证结果表明,模型对其中四重的准确率为100%,对另外六重的准确率为99.99%。此前报道的最佳准确率为97.77%。我们还开发了一个达摩依山文字分类网站服务,用户可以上传文字图像,并立即获得分类结果,以及映射到现代泰语字母表。
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Classification of Dhamma Esan Characters By Transfer Learning of a Deep Neural Network
We present an image classification of Dhamma Esan characters by fine-tuning the Inception V3 deep neural network trained on the ImageNet dataset. Dhamma Esan is a traditional alphabet used in the north-eastern region of Thailand, primarily written on Corypha leaves for the purpose of recording Buddhist scriptures. Preservation of these historical documents calls for the ability to classify the characters of the alphabet in order to facilitate digital indexing and searching, as well as assist anyone trying to read them. Our dataset consists of over 70,000 Dhamma Esan character images, much larger than any previous work. The result of ten-fold cross-validation showed that our model had 100% accuracy for four folds, and 99.99% for the other six folds. The previous best accuracy reported was 97.77%. We also developed a Dhamma Esan character classification web service where users can upload images of characters and get immediate classification results as well as mapping to the modern Thai alphabet.
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