单图像超分辨率采用子带编码器和自适应滤波

M. Mondal, S. Joshi
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引用次数: 0

摘要

超分辨率(SR)算法由单张或多张低分辨率(LR)图像生成高分辨率(HR)图像。该算法克服了CMOS成像传感器的局限性。减小传感器尺寸达到一定限度后,很难获得HR图像。SR技术用于许多视觉应用,如生物成像,军事应用和法医调查。它基本上是一种廉价的提高图像分辨率和提取高频信息的方法。本文提出了两种不同的自适应方案。第一个重点是最小化实际图像和估计图像之间的误差。通过同时建模一个模糊滤波器来捕捉退化过程,以及建模一个创新滤波器来去除模糊效应,使用自适应最小二乘技术来消除传感器噪声,从而实现分辨率增强。第二种方案结合了小波变换和自适应归一化最小均方(NLMS)技术在提高图像质量的同时提高PSNR的优点。并在PSNR、SSIM等视觉质量指标上与现有的超分辨率方法进行了比较。数值结果表明,这些计算效率高的单图像超分辨率技术在实际成像应用中是非常有效的,因为在超分辨率图像中可以观察到视觉质量的显着改善。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Single image super resolution using sub-band coder and adaptive filtering
Super Resolution (SR) algorithm produces a high resolution (HR) image from single or multiple low resolution (LR) images. This algorithm is used to overcome the limitation of imaging CMOS sensors. It is difficult to obtain a HR image by reducing the size of the sensor after a certain limit. SR technique is used in many visual applications like biological imaging, military applications and forensic investigations. It is basically an inexpensive process to enhance the resolution of an image and to extract the high-frequency information. Two different adaptive schemes are proposed here. First one focuses on minimizing the error between the actual image and the estimated image. Resolution enhancement is done here by simultaneously modeling a blurring filter to capture the degradation process as well as modeling an innovation filter to remove the blurring effects, sensor noise using adaptive Least Square technique. The second scheme incorporates the advantages of both visual quality improvement as well as the increase in PSNR by jointly using wavelet transforms and adaptive normalized Least Mean Square (NLMS) technique. Results and performances of these novel techniques are compared with other available Super Resolution methods in terms of the visual quality index like PSNR, SSIM. Numerical results indicate that these computationally efficient single image super resolution techniques are very effective in real life imaging applications as a significant improvement of visual quality is observed in the super resolved image.
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