摘要
最优聚类中心法是一种有效的雷达目标一维距离像识别方法,但当训练数据较少时,该方法的识别性能急剧下降。其原因是该算法在利用少量数据进行训练时易产生“病态”矩阵,“病态”矩阵直接参与运算,导致错误识别结果。因此,该文提出了一种改进最优聚类中心法,主要思想是把“病态”矩阵进行“良态”化处理后再参与运算,以得到正确的识别结果,从而使该算法在训练数据较少时仍能保持较高识别率。仿真实验结果表明该方法的有效性。
Approach based on optimal cluster centers is an effective approach to radar target recognition. But its performance degrades rapidly when only a few training data are available, because badly-conditioned matrixes are generated with a few training data during the training orocess, and mistake appears when badly-conditioned matrixes directly participate in calculation. An improved approach based on optimal cluster centers is proposed in this paper. It solves the above problem by transforming badly-conditioned matrixes to well-conditioned matrixes, so accurate recognition results are obtained. It ensures high recognition rate when just a few training data are available. The simulation results show the efficiency of the proposed approach.
出处
《电子科技大学学报》
EI
CAS
CSCD
北大核心
2006年第2期183-185,192,共4页
Journal of University of Electronic Science and Technology of China
关键词
雷达目标识别
最优聚类中心
最优变换
“病态”矩阵
radar target recognition
optimal cluster centers
optimal transformation
badly-conditioned matrixes