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Optimum Design of 2-D Lowpass FIR Filters For Image Processing Based on A New Algorithm

机译:基于新算法的二维低通FIR滤波器图像处理的优化设计

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摘要

A double sine basis function neural network for the design of 2D lowpass filters is presented. This neural network is contrived to have an energy function that coincides with the sum-squared error of the approximation problem at hand and by ensuring that the energy is a monotonic decreasing function, the approximation problem can be solved. The training theorem is proposed, and design of the 2D lowpass filters is improved obviously. It conquers the primary disadvantages of the conventional neural networks that the convergence speed is rather low. The simulation results indicate that there are no fluctuation both in the passband and stopband, and it attains near ideal filter attenuation characteristics
机译:提出了一种用于二维低通滤波器设计的双正弦基函数神经网络。该神经网络被设计为具有与手头的近似问题的平方和误差相符的能量函数,并且通过确保能量是单调递减函数,可以解决近似问题。提出了训练定理,并明显改善了二维低通滤波器的设计。克服了传统神经网络的主要缺点,即收敛速度相当低。仿真结果表明,通带和阻带均无波动,并达到接近理想的滤波器衰减特性。

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