一种新的基于迁移学习的建筑图像分类与拒绝识别方法

Jared Leon-Malpartida, Jeanfranco D. Farfan-Escobedo, Gladys E. Cutipa-Arapa
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引用次数: 4

摘要

针对建筑图像识别场景,本文提出了一种基于分类器生成的概率向量的分类剔除方法。此外,还对卷积神经网络(CNN)的一组预训练模型进行了评估。迁移学习技术用于特征提取(特征向量),这些用于馈送分类器。同样,对一组分类器进行评估,目的是在建筑物场景图像识别中识别出最优的机器学习算法。在第一个版本的库斯科建筑图像数据集(CuscoBID)上对实验进行了评估。最后,开发了CuscoBID的第二版,由14个不同历史建筑的4560幅图像组成,可供整个科学界使用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A new method of classification with rejection applied to building images recognition based on Transfer Learning
The present paper1 proposes a new method of classification with rejection for the scenario of building images recognition based on the probability vector generated by the classifier. Also, it is performed an evaluation of a set of pre-trained models of convolutional neural networks (CNN). Transfer Learning technique is used for features extraction (feature vectors), these are used to feed the classifier. Similarly, an evaluation is conducted on a set of classifiers with the objective of identifying the most optimal machine learning algorithm during the scene of buildings images recognition. The experiments are evaluated on the first version of the Cusco Building Image Dataset (CuscoBID). Finally, it is developed the second version of CuscoBID, composed of 4560 images of 14 different historical buildings, available to the entire scientific community.
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