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Using a Recurrent Kernel Learning Machine for Small-Sample Image Classification

机译:使用递归核学习机进行小样本图像分类

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Many machine learning algorithms, like Convolutional Neural Networks (CNNs), have excelled in image processing tasks; however, they have many practical limitations. For one, these systems require large datasets that accurately represent the sample distribution in order to optimize performance. Secondly, they have difficulty transferring previously learned knowledge when evaluating data from slightly different sample distributions. To overcome these drawbacks, we propose a recurrent kernel-based approach for image processing using the Kernel Adaptive Autoregressive Moving Average algorithm (KAARMA). KAARMA minimizes the amount of training data required by using the Reproducing Kernel Hilbert Space to build inference into the system. The recurrent nature of KAARMA additionally allows the system to better learn the spatial correlations in the images through one-shot or near one-shot learning. We demonstrate KAARMA’s superiority for small-sample image classification using the JAFFE Face Dataset and the UCI hand written digit dataset.
机译:许多机器学习算法,如卷积神经网络(CNNS),在图像处理任务中卓越;但是,它们有许多实际限制。对于一个,这些系统需要大量数据集,可准确表示样品分布,以优化性能。其次,当评估来自略微不同的样本分布时,它们难以转移以前学到的知识。为了克服这些缺点,我们提出了一种基于内核的基于内核的方法,用于使用内核自适应自回归移动平均算法(Kaarma)进行图像处理。 Kaarma最大限度地减少使用再现内核希尔伯特空间来构建系统所需的培训数据量。 Kaarma的反复性质还允许系统通过一次或接近单次学习来更好地学习图像中的空间相关性。我们展示了kaarma使用jaffe面部数据集和uci手写数字数据集的小样本图像分类的优势。

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