Progressive and constant-speed order filtering neural network

Chi-Ming Chen, J. Yang
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Abstract

In this paper, a new order filtering neural network, which can select a specific ordered value from all inputs, is developed and analyzed. The proposed neural net in two-layer structure iteratively converges to the solution with low and constant convergent speed, which is independent of the number of inputs. With progressive behavior, the proposed neural net obtains the more accurate result when the number of iterations increases if the derived convergent condition is satisfied. From the view points of convergence speed and hardware complexity, the proposed order filtering neural network is suitable for various applications.
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渐进式等速阶滤波神经网络
本文提出并分析了一种新的阶数滤波神经网络,它可以从所有输入中选择一个特定的阶数值。所提出的双层结构神经网络迭代收敛到解,收敛速度低且恒定,与输入个数无关。该神经网络具有递进特性,在满足收敛条件的情况下,随着迭代次数的增加,得到的结果更加准确。从收敛速度和硬件复杂度的角度来看,所提出的阶数滤波神经网络适用于各种应用。
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