Single channel blind source separation method

A blind source separation, single-channel technology, applied in the field of electronic information, can solve problems such as aliasing, result distortion, and divergence

Inactive Publication Date: 2013-05-15
TAIYUAN UNIVERSITY OF SCIENCE AND TECHNOLOGY
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Problems solved by technology

[0005] At present, there are three main types of single-channel blind source separation methods: ①Single-channel ICA analysis, when the frequency spectrum of the signal is relatively close, such as the mixed signal of mother and infant heartbeat, this method cannot be used for separation; ②For the singular value of the signal ICA processing is performed after decomposition, and ICA processing is performed after singular spectrum analysis. When the signal spectrum overlaps, the two methods have poor separation effect and aliasing; ③ ICA processing is performed after wavelet decomposition, that is, W_ICA, and empirical model After modal decomposition, carry out ICA processing, that is, EMD_ICA. These two methods can still separate the signals when the spectrum overlaps. When using wavelet decomposition, it is necessary to select wavelets for different signals, and empirical modal decomposition is based on the characteristics of the sign

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Embodiment Construction

[0036] Implement and analyze by separating the female voice signal from an oscillating source signal as an example, the steps are as follows:

[0037] 1. Two signals for experiment, such as image 3 s1(t) is a voice signal selected from the recording of a female commentator in s1(t), the sampling frequency is 8KHz, s2(t) is an oscillating signal as a noise part, which is represented by a sinusoidal signal generated by matlab. The wire is transmitted to the signal preprocessing module, and the output signal is obtained by linear addition and mixing, such as image 3 x(t).

[0038] 2. For the output signal after the signal preprocessing module, first perform normalization processing, then perform EPSE algorithm processing to suppress the endpoint effect, and then enter the EEMD decomposition processing module to extract the intrinsic mode function IMFs, enter PCA dimensionality reduction, Extract the pivot, and finally perform ICA processing. Separate multiple signals such as...

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Abstract

The invention discloses a single channel blind source separation method, and belongs to the technical field of electronic information. The single channel blind source separation method is characterized by adopting an extreme point symmetric prolongation method, carrying out processing of removing an end effect to ensemble empirical mode decomposition, transforming one-way mixed signals to intrinsic mode functions (IMFs) by using the ensemble empirical mode decomposition, restraining noise, carrying out dimension reduction processing to multi-channel IMFs by utilizing principal component analysis, removing invalid components in the IMFs, and carrying out independent component analysis to multi-channel signals after dimensionality reduction to achieve blind source separation. Implementation steps comprise carrying out linear adding to the multi-channel signals and mixing the multi-channel signals to single-channel signals to transmit, recovering source signals simply, fast and effectively under the condition of not influencing later stage pattern recognition effect, and achieving the outputting of multi-channel outputs. The single channel blind source separation method has the advantages of being capable of separating the multi-channel frequency-spectrum-overlapped signals mixed to one channel under the condition of not influencing the later stage recognition effect.

Description

technical field [0001] The invention belongs to the technical field of electronic information, and in particular relates to a single-channel blind source separation method. Background technique [0002] Blind Source Separation (BSS) began to rise in the 1980s, especially with the popularity of neural networks, it has been studied by more and more people, and it has become one of the research hotspots in the field of signal processing. It has been widely used in many fields, including image, communication, vibration engineering, biomedical engineering, array signal processing, remote sensing and telemetry, especially in sonar, communication, radar, voice, image processing, etc. It plays a vital role in the development of military and national defense science and technology. [0003] The most classic application example of blind source separation is the so-called "cocktail party problem". This problem is based on such a scenario: in a cocktail party attended by many people, e...

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Application Information

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IPC IPC(8): G10L21/0272
Inventor 郭一娜郑秀萍黄书华郅逍遥李临生卓东风
Owner TAIYUAN UNIVERSITY OF SCIENCE AND TECHNOLOGY
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