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Design of a Computationally Economical Image Classifier using Generic Features

机译:利用通用特征设计经济型图像分类器

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In this paper, we propose an image classification technique which uses a simple autoencoder with a regularizer. Nowadays, Convolutional Neural Networks (CNN) are primarily used for image classification. Our method can be used for image classification with much reduced requirement of computational capability than a complex CNN which has a huge number of degrees of freedom. Here, the terms simple and complex, respectively, correspond to the simplicity and the complexity of a network in terms of the number of learnable parameters (degrees of freedom) and the number of hidden layers. This technique uses features extracted from a pretrained CNN, trained on a completely different dataset. Genetic algorithm solves for the optimal hyperparameters of the pretrained CNN. It is observed that these features serve as important and robust parameters for the training of the autoencoder, as a final average image classification accuracy improvement of about 17.45% is observed with the inclusion of these features. We use a pretrained CNN on MNIST dataset and classify images of several other benchmark datasets. We utilize different classifiers for image classification based on features extracted from the autoencoder and repeat each of the experiments a number of times with different random initialization of the classifier and the weight matrix of the autoencoder. We also perform experiments by pretraining the CNN with different datasets. Our results show a notable image classification accuracy and a significant reduction of training time with respect to a complex CNN.
机译:在本文中,我们提出了一种图像分类技术,该技术使用带有正则化器的简单自动编码器。如今,卷积神经网络(CNN)主要用于图像分类。与具有大量自由度的复杂CNN相比,我们的方法可用于图像分类,而对计算能力的要求却大大降低。在此,术语简单和复杂分别在可学习参数的数量(自由度)和隐藏层的数量方面对应于网络的简单性和复杂性。该技术使用从完全不同的数据集上训练的预训练CNN中提取的特征。遗传算法解决了预训练CNN的最优超参数问题。可以观察到,这些特征是训练自动编码器的重要且健壮的参数,因为在包含这些特征的情况下,最终平均图像分类精度提高了约17.45%。我们在MNIST数据集上使用经过预训练的CNN,并对其他几个基准数据集的图像进行分类。我们基于从自动编码器提取的特征,利用不同的分类器对图像进行分类,并使用分类器和自动编码器的权重矩阵的不同随机初始化多次重复每个实验。我们还通过使用不同的数据集对CNN进行预训练来进行实验。我们的结果表明,相对于复杂的CNN,图像分类准确度显着,并且训练时间显着减少。

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