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RDCN-SR: Integrating regression model with deep convolutional networks for image super-resolution

机译:RDCN-SR:将回归模型与深度卷积网络集成以实现图像超分辨率

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The spatial resolution of the images captured by the optical components is very less and the image details are minimized due to problems, such as optical blurring, deviation in the lens and so on. Hence, the image resolution enhancing techniques have obtained more attention in recent years. This paper presents an image super-resolution (SR) method by integrating the deep convolutional network with the kernel regression model. At first, the low-resolution image is applied to the bi-cubic interpolation to increase the dimensions of the image based on the upscaling factor. Then, the image produced by the bi-cubic interpolation is applied to the deep convolutional network. Later, the high-resolution (HR) image obtained from the deep convolutional network is provided as the input to the kernel regression function to generate the enhanced high-resolution image. Finally, this paper analyses the performance of the proposed hybrid model for image super-resolution with the existing systems, such as Bicubic, SRCNN 2014, and SRCNN 2016 using PSNR. Experimental results show that the proposed model generates the enhanced HR image by achieving the higher PSNR value.
机译:光学部件捕获的图像的空间分辨率非常小,并且由于诸如光学模糊,透镜偏移等问题而使图像细节最小化。因此,近年来,图像分辨率增强技术得到了更多的关注。本文通过将深度卷积网络与核回归模型相集成,提出了一种图像超分辨率(SR)方法。首先,将低分辨率图像应用于双三次插值,以基于放大系数来增加图像的尺寸。然后,将双三次插值产生的图像应用于深度卷积网络。随后,将从深度卷积网络获得的高分辨率(HR)图像提供为内核回归函数的输入,以生成增强的高分辨率图像。最后,本文使用现有的系统(例如Bicubic,SRCNN 2014和SRCNN 2016)使用PSNR分析了提出的图像超分辨率混合模型的性能。实验结果表明,提出的模型通过获得较高的PSNR值来生成增强的HR图像。

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