摘要
For the weak line-spectrum target detection of uniiianned underwater vehicles in the complex environment,a supervised learning detection method witli pre-processing of sparsity-based adaptive line enhancer(ALE)is proposed.This method incorporates al_(p)-nonn sparse penalty into the cost function of ALE,and it also promotes the sparse regularization model to the 0<p<l's one.After the processing of sparsity-based ALE,the entropy features of target beam spectrum become obviously different.Using the small sample learning ability of support ve'etor machine(SVM),the method classifies the entropy characteristic curve of beam spectrum and determines if the target exists.The simulation result sliows that with the-20 dB input SNR,the SNR gain of l_(1/2)-nonn sparsity-based ALE is 11.5 dB higher than that of conventional ALE.The effectiveness of the method is verified by using the unmanned underwater vehicle(UUV)experimental data.Under the influence of wideband strong interferences,the false alarm rate is 3.5%and the detection rate is 95.8%,which improved the detection probability of weak line-spectrum targets.
基金
the Major Program of National Defense Fundamental Research(JCKY2016206A003)
the National Natural Science Foundation of China(11904386,62001469).