基于contourlet和小波变换的人工神经网络对静止图像分辨率进行增强

S. M. Entezarmahdi, M. Yazdi
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引用次数: 7

摘要

本文提出了两种基于变换的超分辨方法来提高静止图像的分辨率。第一种方法是利用给定图像的低分辨率小波变换系数训练神经网络,然后利用该神经网络估计给定图像的小波细节子带;这样,将这些估计子带作为小波细节,将给定图像作为近似图像,利用小波反变换得到超分辨率图像。在第二种方法中,将小波变换替换为contourlet变换,采用相同的方法。在不同类型的图像上,对这两种方法进行了比较,并与双三次方法进行了比较。实验结果表明,与常规的静态图像分辨率增强方法相比,所提方法性能优越。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Stationary image resolution enhancement on the basis of contourlet and wavelet transforms by means of the artificial neural network
In this paper two transform based super resolution methods are presented for enhancing the resolution of a stationary image. In the first method, neural network is trained by wavelet transform coefficients of lower resolution of a given image, and then this neural network are used to estimate wavelet details subbands of that given image. In this way, by using these estimated subbands as wavelet details and the given image as the approximation image, a super-resolution image is made using the inverse wavelet transform. In the second proposed method, the wavelet transform is replaced by contourlet transform and the same mentioned procedure is applied. These two methods have been compared with each other and with the bicubic method on different types of images. The experimental results demonstrate the superiority performance of the proposed methods compared with regular stationary image resolution enhancing methods.
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