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Hebbian and Anti-Hebbian Type Neural Network for Blind Separation of Nonstationary Signals

机译:休伯和反鹤壁型神经网络,用于盲目分离非平稳信号

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This contribution describes a neural network that self-organizes to recover the original signals from sensor signals. No particular information is required about the statistical properties of the sources and the coefficients of the linear transformation, except the fact that the source signals are statistically independent and nonstationary. The learning rule for the network's parameters is derived from the steepest descent minimization of a time-dependent cost function that takes the minimum only when the network outputs are uncorrelated with each other.
机译:该贡献描述了一种神经网络,其自组织以从传感器信号恢复原始信号。除了源信号在统计上独立且非间隔的情况之外,源的统计特性并没有必要对源的统计特性和线性变换的系数。网络参数的学习规则衍生自最陡的下降最小化时间依赖性成本函数,该函数仅当网络输出彼此不相关时才采用最小。

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