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首页> 外文期刊>Journal of intelligent & fuzzy systems: Applications in Engineering and Technology >A spatially-adaptive neural network approach to regularized image restoration
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A spatially-adaptive neural network approach to regularized image restoration

机译:一种空间自适应神经网络的正则化图像复原方法

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摘要

When using a regularized approach for image restoration there is always a compromise between, image sharpness and noise suppression. Since noise is removed at the cost of edges and detail within the image, there is a need to introduce algorithms which exhibit some kind of memory and cater for the spatial structure of an image. To this cause, we introduce an efficient restoration algorithm, based on a modified adaptive Hopfield neural network. The algorithm is capable of spatially regularizing an image and thereby preserving data fidelity around edges while simultaneously suppressing noise in more noticeable areas such as smooth regions. The proposed method demonstrates an improvement in restoration quality over existing adaptive and non-adaptive approaches. This is illustrated with simulations on benchmark images under varying noise levels.
机译:当使用正则化方法进行图像恢复时,在图像清晰度和噪声抑制之间总是存在折衷。由于以图像内的边缘和细节为代价来去除噪声,因此需要引入表现出某种存储器并满足图像的空间结构的算法。为此,我们引入了一种基于改进的自适应Hopfield神经网络的高效恢复算法。该算法能够在空间上对图像进行正则化,从而保留边缘周围的数据保真度,同时在更引人注目的区域(例如平滑区域)中抑制噪声。与现有的自适应和非自适应方法相比,该方法证明了恢复质量的提高。通过在变化的噪声水平下对基准图像进行仿真可以说明这一点。

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