根据铭文材料对古代铭文图像进行分类

N. Jayanthi, Tarush Sharma, Vinay Sharma, S. Tyagi, S. Indu
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引用次数: 1

摘要

机器学习和人工智能使我们能够处理图像并帮助我们解决重要问题。本文将铭文图像分为石刻、金属铭文和棕榈叶铭文三大类。由于古代铭文材料的腐烂,这类材料的分类变得具有挑战性。为了解决这一问题,我们使用了GLCM、KAZE、BRISK等多种特征提取方法来实现基于纹理的特征检测并对其进行分类。线性和非线性两种方法都被用于特征提取。本文通过对图像进行分类,并对各种特征提取方法在算法所需的内存、时间可扩展性和方法的准确率评分方面进行比较,从而得出结论。本文包含丰富的信息,有助于分类问题的决策。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Classification of ancient inscription images on the basis of material of the inscriptions
Machine Learning and AI has allowed us to process images and help us solve vital problems. In this paper, we are classifying inscription images into three image inscription classes namely stone inscriptions, metal inscriptions and palm leaves inscriptions. Due to decaying materials of ancient inscriptions, the classification of such materials becomes challenging. To address this problem, we are using various feature extraction methods like GLCM, KAZE, BRISK to implement texture based feature detection and subsequently classifying them. Both linear and non-linear methods for feature extraction are being used. The paper is concluded by performing classification of images and also making comparisons between all the feature extraction methods in terms of memory required by the algorithm, time scalability and accuracy score of the method. The paper consists of rich information which would be useful in decision making in classification problems.
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