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A grey system-based approach for the sharpening of images

机译:基于灰色系统的图像锐化方法

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Based on the Grey prediction theory, we propose in this paper a two-pass algorithm for the sharpening of images. In the first pass, pixels around edges or boundaries are detected with edge detection mechanism. During the second pass, those pixels detected as around edges or boundaries are adjusted for the purpose of image sharpening, and those non-edge pixels are kept unaltered. With the proposed approach, most of the original information contained in the image can be retained. In the second pass, the magnitude, i.e., the increment or decrement, to be added to those edge pixels has to be determined. Usually, a larger additive can have a better sharpening result. However it can also lead to the saturation of intensity around edge pixels. Aimed to find the maximal additive magnitude automatically, we proposed in this paper the use of a Grey prediction model GM(1,1) so that the condition of over-sharpening in images to be sharpened can be avoided. In addition, a scaling factor can also be used for the adjustment of the additive magnitude in the proposed approach. Extensive experiments on natural images as well as medical images are also given in this paper. As we will see in the experiments, the proposed approach can have a very distinct intensity transition for pixels around edges or boundaries in the sharpened images, which demonstrates the usefulness of the proposed approach.
机译:基于灰色预测理论,本文提出了一种用于图像锐化的两遍算法。在第一遍中,使用边缘检测机制检测边缘或边界周围的像素。在第二遍期间,为了图像锐化的目的,调整检测为围绕边缘或边界的那些像素,并且使那些非边缘像素保持不变。使用建议的方法,可以保留图像中包含的大多数原始信息。在第二遍中,必须确定要添加到那些边缘像素的幅度,即增量或减量。通常,较大的添加剂可以具有更好的锐化效果。但是,这也会导致边缘像素周围的强度饱和。为了自动找到最大加法幅度,我们提出使用灰色预测模型GM(1,1)来避免要锐化的图像中过度锐化的情况。另外,在所提出的方法中,比例因子也可以用于调整加和幅度。本文还对自然图像和医学图像进行了广泛的实验。正如我们将在实验中看到的那样,对于锐化图像中边缘或边界周围的像素,所提出的方法可以具有非常明显的强度过渡,这证明了所提出方法的有用性。

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