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Independent Component Analysis Algorithm FPGA Design To Perform Real-Time Blind Source Separation

机译:独立成分分析算法FPGA设计可进行实时盲源分离

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The conditions that arise in the Cocktail Party Problem prevail across many fields creating a need for of Blind Source Separation. The need for BSS has become prevalent in several fields of work. These fields include array processing, communications, medical signal processing, and speech processing, wireless communication, audio, acoustics and biomedical engineering. The concept of the cocktail party problem and BSS led to the development of Independent Component Analysis (ICA) algorithms. ICA proves useful for applications needing real time signal processing. The goal of this research was to perform an extensive study on ability and efficiency of Independent Component Analysis algorithms to perform blind source separation on mixed signals in software and implementation in hardware with a Field Programmable Gate Array (FPGA). The Algebraic ICA (A-ICA), Fast ICA, and Equivariant Adaptive Separation via Independence (EASI) ICA were examined and compared. The best algorithm required the least complexity and fewest resources while effectively separating mixed sources. The best algorithm was the EASI algorithm. The EASI ICA was implemented on hardware with Field Programmable Gate Arrays (FPGA) to perform and analyze its performance in real time.
机译:鸡尾酒会问题产生的条件在许多领域普遍存在,因此需要盲源分离。对BSS的需求已在多个工作领域中普遍存在。这些领域包括阵列处理,通信,医学信号处理和语音处理,无线通信,音频,声学和生物医学工程。鸡尾酒会问题和BSS的概念导致了独立成分分析(ICA)算法的发展。事实证明,ICA对于需要实时信号处理的应用非常有用。这项研究的目的是对独立分量分析算法的能力和效率进行广泛的研究,以对混合信号进行盲源分离,并使用现场可编程门阵列(FPGA)在硬件中实现。检查并比较了代数ICA(A-ICA),快速ICA和通过独立的等变自适应分离(EASI)ICA。最佳算法需要最小的复杂度和最少的资源,同时可以有效地分离混合源。最好的算法是EASI算法。 EASI ICA在具有现场可编程门阵列(FPGA)的硬件上实施,以实时执行和分析其性能。

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