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Optimising Deep Learning by Hyper-heuristic Approach for Classifying Good Quality Images

机译:通过超启发式方法优化深度学习以对高质量图像进行分类

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Deep Convolutional Neural Network (CNN), which is one of the prominent deep learning methods, has shown a remarkable success in a variety of computer vision tasks, especially image classification. However, tuning CNN hyper-parameters requires expert knowledge and a large amount of manual effort of trial and error. In this work, we present the use of CNN on classifying good quality images versus bad quality images without understanding the image content. The well known data-sets were used for performance evaluation. More importantly we propose a hyper-heuristic approach for tuning CNN hyper-parameters. The proposed hyper-heuristic encompasses of a high level strategy and various low level heuristics. The high level strategy utilises search performance to determine how to apply low level heuristics to automatically find an appropriate set of CNN hyper-parameters. Our experiments show the effectiveness of this hyper-heuristic approach which can achieve high accuracy even when the training size is significantly reduced and conventional CNNs can no longer perform well. In short the proposed hyper-heuristic approach does enhance CNN deep learning.
机译:深度卷积神经网络(CNN)是最重要的深度学习方法之一,它已在各种计算机视觉任务(尤其是图像分类)中取得了显著成功。但是,调整CNN超参数需要专业知识和大量的人工尝试和尝试。在这项工作中,我们介绍了CNN在不了解图像内容的情况下对高质量图像与劣质图像进行分类的用途。众所周知的数据集用于性能评估。更重要的是,我们提出了一种超启发式方法来调整CNN超参数。所提出的超启发式方法包括高级策略和各种低级启发式方法。高级策略利用搜索性能来确定如何应用低级启发式方法来自动查找适当的CNN超参数集。我们的实验表明,这种超启发式方法的有效性,即使训练量大大减少且常规CNN不再能很好地表现,它仍可以实现高精度。简而言之,提出的超启发式方法确实增强了CNN深度学习。

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