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Cross-Domain Reuse of Extracted Knowledge in Genetic Programming for Image Classification

机译:遗传规划中用于图像分类的提取知识的跨域重用

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摘要

Genetic programming (GP) is a well-known evolutionary computation technique, which has been successfully used to solve various problems, such as optimization, image analysis, and classification. Transfer learning is a type of machine learning approach that can be used to solve complex tasks. Transfer learning has been introduced to GP to solve complex Boolean and symbolic regression problems with some promise. However, the use of transfer learning with GP has not been investigated to address complex image classification tasks with noise and rotations, where GP cannot achieve satisfactory performance, but GP with transfer learning may improve the performance. In this paper, we propose a novel approach based on transfer learning and GP to solve complex image classification problems by extracting and reusing blocks of knowledge/information, which are automatically discovered from similar as well as different image classification tasks during the evolutionary process. The proposed approach is evaluated on three texture data sets and three office data sets of image classification benchmarks, and achieves better classification performance than the state-of-the-art image classification algorithm. Further analysis on the evolved solutions/trees shows that the proposed approach with transfer learning can successfully discover and reuse knowledge/information extracted from similar or different problems to improve its performance on complex image classification problems.
机译:遗传编程(GP)是一种众所周知的进化计算技术,已成功用于解决各种问题,例如优化,图像分析和分类。转移学习是一种机器学习方法,可用于解决复杂任务。转移学习已被引入到GP中,以解决一些复杂的布尔和符号回归问题。但是,尚未研究将转移学习与GP结合使用来解决带有噪声和旋转的复杂图像分类任务,其中GP无法获得令人满意的性能,但是具有转移学习的GP可能会改善性能。在本文中,我们提出了一种基于迁移学习和GP的新颖方法,通过提取和重用知识/信息块来解决复杂的图像分类问题,这些知识/信息块是在进化过程中从相似以及不同的图像分类任务中自动发现的。该方法在图像分类基准的三个纹理数据集和三个办公数据集上进行了评估,并且比最新的图像分类算法具有更好的分类性能。对演化的解决方案/树的进一步分析表明,所提出的带有转移学习的方法可以成功地发现和重用从相似或不同问题中提取的知识/信息,从而提高其在复杂图像分类问题上的性能。

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