Title :
Parameter estimation of manoeuvring targets based on segment integration and Lv´s transform
Author :
Jing Tian ; Wei Cui ; Xiao-lei Lv ; Shuang Wu ; Si-liang Wu
Author_Institution :
Radar Res. Lab., Beijing Inst. of Technol., Beijing, China
Abstract :
In this paper, the received signal in a range cell is modelled as a multi-component linear frequency-modulated (LFM) signal after range compression and motion compensation, and a new method based on segment integration and Lv´s transform (LVT) is introduced for parameter estimation of LFM signals over long observation interval. In this method, the LFM signals are firstly divided into segments and fast Fourier transform (FFT) is then applied within each signal segment. After that, the same frequency resolution bins of each segment are selected to construct new series and inter-segment LVT is implemented to obtain the parameter estimates. The criteria to choose the number of segments, output signal-to-noise ratio, computational complexity and memory cost are analysed in detail for this new approach. This method is fast and able to obtain the accurate parameter estimates by using the complex multiplications and FFT. Comparisons with other popular methods, LVT, maximum-likelihood estimation and fractional Fourier transform are performed. Experimental results demonstrate the proposed method is capable of obtaining the accurate parameter estimates with low computational burden and storage memory, making it suitable to be applied in memory-limited and real-time processing systems.
Keywords :
FM radar; computational complexity; fast Fourier transforms; motion compensation; object detection; radar detection; radar imaging; radar resolution; FFT; LV transform; complex multiplication; computational complexity; fast Fourier transform; frequency resolution; intersegment LVT; linear frequency modulation; manoeuvring target parameter estimation; memory cost; memory limited system; motion compensation; multicomponent LFM signal; radar imaging; range cell; range compression; real-time processing systems; received signal modeling; segment integration; signal segment; signal-to-noise ratio;
Journal_Title :
Radar, Sonar & Navigation, IET
DOI :
10.1049/iet-rsn.2014.0350