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Remove extremum median filtering and minimal absolute difference of four directional filtering on improved PCNN model

机译:改进PCNN模型上的四个方向滤波的极值中值滤波和最小绝对差异

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The pulse coupled neural network (PCNN) has been widely applied to remove the image impulse noise due to its characteristics of variable threshold and synchronous pulse bursts. However, the denoising effect will be significantly worse when the noise density is too big. In this paper, Remove Extremum Median Filtering and Four Directional Minimal Absolute Difference Filtering algorithms are proposed based on the contours and edges continuity of the images. Simulation experiments show that, compared with the median filter based on improved PCNN, the two proposed algorithms have better performance in denoising quality and computing speed. They can also be applied to other image processing problems such as image restoration and edge detection.
机译:脉冲耦合神经网络(PCNN)已被广泛应用于除了其可变阈值和同步脉冲突发的特性引起的图像脉冲噪声。然而,当噪声密度太大时,去噪会显着差。在本文中,基于轮廓的轮廓和边缘的连续性提出了删除极值中值滤波和四个方向最小绝对差滤波算法。仿真实验表明,与基于改进PCNN的中值滤波器相比,两个提议的算法具有更好的表现,以便质量和计算速度更好。它们还可以应用于其他图像处理问题,例如图像恢复和边缘检测。

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