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首页> 外文期刊>Engineering Applications of Artificial Intelligence >Blind source separation based on self-organizing neural network
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Blind source separation based on self-organizing neural network

机译:基于自组织神经网络的盲源分离

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This contribution describes a neural network that self-organizes to recover the underlying original sources from typical 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. This is often true for real life applications. We propose an online learning solution using a neural network and use the nonstationarity of the sources to achieve the separation. 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. In this process divide the problem into two learning problems one of which is solved by an anti-Hebbian learning and the other by an Hebbian learning process. We also compare the performance of our algorithm with other solutions to this task.
机译:这种贡献描述了一个自组织的神经网络,可以从典型的传感器信号中恢复潜在的原始来源。除了源信号在统计上独立且不稳定的事实之外,不需要有关源的统计属性和线性变换系数的特定信息。对于现实生活中的应用程序通常是这样。我们提出了使用神经网络的在线学习解决方案,并使用源的非平稳性来实现分离。网络参数的学习规则是从与时间相关的成本函数的最陡下降最小化而来的,该函数仅在网络输出彼此不相关时才取最小值。在此过程中,将问题分为两个学习问题,其中一个通过反希伯来学习解决,另一个通过希伯来学习过程解决。我们还将比较我们算法的性能和其他解决方案。

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