Single-Channel Source Separation of Multi-Component Radar Signal with the Same Generalized Period Using ICA

A novel method of single-channel source separation based on independent component analysis (ICA) is presented in this study. The method utilizes the generalized period character of radar signals to structure a multi-dimensional matrix and then uses said matrix to accomplish ICA. Simulation results demonstrate the proposed method’s effectiveness.

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