Comparative Study of Machine Learning Supervised Techniques for Image Classification Using an Institutional Identification Documents Dataset

Álvaro Ramiro Hernández Millán, M. Mendoza-Moreno, Larry Mauricio Portocarrero López, Alexander Castro-Romero
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引用次数: 2

Abstract

The growing use of machine learning algorithms for image classification process using open source libraries promotes the identification of data sets to be applied on different contexts. In this way, the most outstanding algorithms for image classification with machine learning supervised techniques were implemented and their accuracy level was compared in an uncommon context, such as identification documents (combining text and images) of a university institution as a study case. The used dataset has a high complexity level in terms of design, diversity and population density. The study has provided outstanding results such as: 1) the implementation of the Transfer Learning / Image Retraining technique for which the expected performance was obtained in shorter times compared to the other techniques or algorithms studied, and 2) the need to implement a previous classifier whose objective is to refine the dataset to promote higher precision levels for new instances (new documents to classify).
基于机构识别文档数据集的机器学习监督图像分类技术的比较研究
越来越多的机器学习算法用于使用开源库的图像分类过程,促进了数据集的识别,以应用于不同的上下文。通过这种方式,利用机器学习监督技术实现了最优秀的图像分类算法,并在一个不常见的上下文中比较了它们的准确率水平,例如将大学机构的身份证件(结合文本和图像)作为研究案例。所使用的数据集在设计、多样性和人口密度方面具有较高的复杂性。该研究提供了突出的结果,例如:1)实现了迁移学习/图像再训练技术,与所研究的其他技术或算法相比,该技术在更短的时间内获得了预期的性能;2)需要实现先前的分类器,其目标是改进数据集,以提高新实例(新文档分类)的更高精度水平。
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