In this paper, we propose a new method for image denoising. The new method based on non-subsampled shearlet (NSST), non-local means (NLM) and hard threshold. The method splits a noised image into three parts: low frequency sub-band, band-pass sub-band, high frequency sub-band. NLM filter is used in low frequency sub-band and high frequency sub-band to remove noise after inverse NSST. The hard threshold is applied to inhibit the noise in the band-pass sub-band. Finally merge the images to get the denoised image. Experimental results on greyscale images indicate that the proposed approach is competitive with respect to peak signal to noise ratio and structural similarity index measure with several state-of-the-art algorithms especially at low noise levels.
Update of deep network framework to super-resolution reconstruction has been greatly improved, but there are great problems of loss of texture information and decreased image detail quality. In this paper, we have constructed network focus on texture features structure, which can generate SR images by taking full advantage of low resolution images and improve the efficiency of generation. In our method, we first adopt extract detail texture information by kernel diversity network (KDN)which is a combined with residual network to extensive extract various feature of low dimensional images. Particularly, KDN is derived from the processing of the original image and has the ability to prevent information loss and its operation according to certain combination mode by convolution operations with different properties. Furthermore, we design pyramid amplification networks that improving generation speed and image quality to maximizing utilization information of the original image. Our final results show that an SR network with KDN and pyramid networks can generate more natural and clear texture in comparison to state-of-the-art methods.
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