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Machine Learning Models for Cultural Heritage Image Classification: Comparison Based on Attribute Selection

机译:文化遗产图像分类机器学习模型:基于属性选择的比较

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摘要

Image classification is one of the most important tasks in the digital era. In terms of cultural heritage, it is important to develop classification methods that obtain good accuracy, but also are less computationally intensive, as image classification usually uses very large sets of data. This study aims to train and test four classification algorithms: (i) the multilayer perceptron, (ii) averaged one dependence estimators, (iii) forest by penalizing attributes, and (iv) the k-nearest neighbor rough sets and analogy based reasoning, and compares these with the results obtained from the Convolutional Neural Network (CNN). Three types of features were extracted from the images: (i) the edge histogram, (ii) the color layout, and (iii) the JPEG coefficients. The algorithms were tested before and after applying the attribute selection, and the results indicated that the best classification performance was obtained for the multilayer perceptron in both cases.
机译:图像分类是数字时代最重要的任务之一。在文化遗产方面,重要的是要开发获得良好准确性的分类方法,但也较少计算密集,因为图像分类通常使用非常大的数据集。本研究旨在培训和测试四种分类算法:(i)多层的Perceptron,(ii)通过惩罚属性,(iv)基于K-最近邻的粗糙集和基于类比的推理来平均一个依赖估计器,(iii)森林,并将这些与从卷积神经网络(CNN)获得的结果进行比较。从图像中提取了三种类型的特征:(i)边缘直方图,(ii)颜色布局和(iii)JPEG系数。在施加属性选择之前和之后测试算法,结果表明,在两种情况下都获得了Multidayer Perceptron的最佳分类性能。

著录项

  • 作者

    Radmila Janković;

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  • 年度 2019
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  • 原文格式 PDF
  • 正文语种 eng
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