首页> 外国专利> BLIND SIGNAL PROCESSING SYSTEM EMPLOYING INFORMATION MAXIMIZATION TO RECOVER UNKNOWN SIGNALS THROUGH UNSUPERVISED MINIMIZATION OF OUTPUT REDUNDANCY

BLIND SIGNAL PROCESSING SYSTEM EMPLOYING INFORMATION MAXIMIZATION TO RECOVER UNKNOWN SIGNALS THROUGH UNSUPERVISED MINIMIZATION OF OUTPUT REDUNDANCY

机译:盲信号处理系统采用信息最大化,通过对输出冗余的无监督最小化来恢复未知信号

摘要

A neural network system and unsupervised learning process for separating unknown source signals from their received mixtures by solving the Independent Components Analysis (ICA) problem. The unsupervised learning procedure solves the general blind signal processing problem by maximizing joint output entropy through gradient ascent to minimize mutual information in the outputs. The neural network system can separate a multiplicity of unknown source signals from measured mixture signals where the mixture characteristics and the original source signals are both unknown. The system can be easily adapted to solve the related blind deconvolution problem that extracts an unknown source signal from the output of an unknown reverberating channel.
机译:通过解决独立成分分析(ICA)问题将未知源信号从其接收到的混合物中分离出来的神经网络系统和无监督学习过程。无监督学习过程通过梯度上升最大化联合输出熵以最小化输出中的互信息,从而解决了一般的盲信号处理问题。神经网络系统可以从混合特性和原始源信号都未知的实测混合信号中分离出多个未知源信号。该系统可以轻松地解决相关的盲反卷积问题,该问题从未知混响通道的输出中提取未知源信号。

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