Image nonlinear filter based on CNN-PDE
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摘要: 偏微分(PDE)非線性圖像濾波方法具有優良特性,但由于其計算量大而無法滿足實時控制需求.細胞神經網(CNN)可以描述圖像PDE模型,利用模擬CNN芯片并行求解,有助于提高其實時性.本文用CNN實現了PDE偏差非線性圖像濾波器,提出了一種局部運算的噪聲估計方法以選擇適當的平滑系數.計算結果表明,這種噪聲估計方法可以對不同噪聲水平作出較精確的估計.仿真實驗結果表明,CNN-PDE非線性濾波器取得了滿意的濾波效果,用CNN實現PDE非線性濾波器的方法是有效可行的.Abstract: An image nonlinear filter based on Partial Differential Equations (PDE) has good performance, but it consumes large time and resource. Cellular Neural Networks (CNN) can depict the spatial discrete PDE model, and by means of an CNN analog chip, CNN can solve PDE efficiently. A nonlinear filter based on CNN-PDE was studied, and for selecting the diffusion coefficient properly a noise-estimate technique was presented by means of local operation only. The test result showed that this noise-estimate technique offered a comparatively accurate measure of different noise levels. Simulations of artificial noise images showed that this CNN-PDE nonlinear filter would suppress noise and preserve image edge simultaneously. It is feasible and effective to realize the PDE image process technique by CNN.
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