This paper mainly revolves the time-frequency image of low probability of intercept(LPI) radar signals and carries out research work on image features selection and extraction and recognition. Since Choi-Williams dist...This paper mainly revolves the time-frequency image of low probability of intercept(LPI) radar signals and carries out research work on image features selection and extraction and recognition. Since Choi-Williams distribution(CWD) uses the exponential kernel of bilinear generalized class of time-frequency distribution, it has an excellent time-frequency aggregation. And it is suitable for detecting LPI radar signals in a low signal-to-noise ratio(SNR) condition. A radial integration method based on the integral rotating factor is proposed to detect LPI radar signals when the signals' time-frequency image is obtained. First, the digital image processing method is used to preprocess the LPI radar signals' time-frequency images after CWD transformation; then, the radial integration method based on the integral rotating factor is used to detect LPI radar signals in the binary images. The analytic results of real data show that the method has a good performance on detecting LPI radar signals in a low SNR condition. Additionally,the method is simple and takes less logic resources and has the potential of real-time detection of LPI radar signals.展开更多
为了得到优质的融合图像,提出了一种改进的拉普拉斯能量和(New Sum of Modified Laplacian,NSML)多聚焦图像融合算法。该算法在传统SML计算每个像素点的变步长拉普拉斯算子值仅有的水平和垂直方向的基础上,增加了斜对角线上的四个方向...为了得到优质的融合图像,提出了一种改进的拉普拉斯能量和(New Sum of Modified Laplacian,NSML)多聚焦图像融合算法。该算法在传统SML计算每个像素点的变步长拉普拉斯算子值仅有的水平和垂直方向的基础上,增加了斜对角线上的四个方向。同时通过分析NSML算法的计算过程,发现存在大量的重复计算,从而提出了基于积分图像的快速NSML图像融合方法。该方法通过简化NSML的计算过程,大大减少了图像融合处理过程消耗的时间,提高了图像融合的效率。实验结果表明,快速NSML方法在达到极佳融合图像质量的同时,提升了算法的实时性。展开更多
文摘This paper mainly revolves the time-frequency image of low probability of intercept(LPI) radar signals and carries out research work on image features selection and extraction and recognition. Since Choi-Williams distribution(CWD) uses the exponential kernel of bilinear generalized class of time-frequency distribution, it has an excellent time-frequency aggregation. And it is suitable for detecting LPI radar signals in a low signal-to-noise ratio(SNR) condition. A radial integration method based on the integral rotating factor is proposed to detect LPI radar signals when the signals' time-frequency image is obtained. First, the digital image processing method is used to preprocess the LPI radar signals' time-frequency images after CWD transformation; then, the radial integration method based on the integral rotating factor is used to detect LPI radar signals in the binary images. The analytic results of real data show that the method has a good performance on detecting LPI radar signals in a low SNR condition. Additionally,the method is simple and takes less logic resources and has the potential of real-time detection of LPI radar signals.
文摘为了得到优质的融合图像,提出了一种改进的拉普拉斯能量和(New Sum of Modified Laplacian,NSML)多聚焦图像融合算法。该算法在传统SML计算每个像素点的变步长拉普拉斯算子值仅有的水平和垂直方向的基础上,增加了斜对角线上的四个方向。同时通过分析NSML算法的计算过程,发现存在大量的重复计算,从而提出了基于积分图像的快速NSML图像融合方法。该方法通过简化NSML的计算过程,大大减少了图像融合处理过程消耗的时间,提高了图像融合的效率。实验结果表明,快速NSML方法在达到极佳融合图像质量的同时,提升了算法的实时性。