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Multiple Sequential Regularized Extreme Learning Machines for Single Image Super Resolution

机译:用于单图像超分辨率的多序列正则化极限学习机

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摘要

In this letter, we propose an example-based super-resolution algorithm based on multiple neural networks trained sequentially using the method online sequential regularized extreme learning machine. In order to train multiple networks, we divide the training samples into clusters using local gradient information, and a distinct network is trained for each cluster. We add another layer of learning by training linear kernels to reshape the network output patches into full images. Also, we employ a fast reconstruction scheme before and after the learning stage. Experiments show that the proposed method generates comparable or better results when compared to important works of the literature, without the need for specialized hardware, large training datasets, and extensive training time.
机译:在这封信中,我们提出了一种基于实例的超分辨率算法,该算法基于使用在线顺序正则化极限学习机的方法依次训练的多个神经网络。为了训练多个网络,我们使用局部梯度信息将训练样本分为多个集群,并为每个集群训练一个不同的网络。我们通过训练线性核将网络输出补丁重塑为完整图像,从而增加了另一层学习。此外,我们在学习阶段前后都采用了一种快速的重建方案。实验表明,与文献的重要著作相比,该方法可产生可比或更好的结果,而无需专用硬件,庞大的训练数据集和大量的训练时间。

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