计算机工程与应用
計算機工程與應用
계산궤공정여응용
COMPUTER ENGINEERING AND APPLICATIONS
2013年
8期
17-21
,共5页
红外小目标%聚类分析%组合帧
紅外小目標%聚類分析%組閤幀
홍외소목표%취류분석%조합정
infrared small target%cluster analysis%composite frame
针对深空背景下的红外弱小目标检测,提出了一种基于聚类分析的目标检测方法,该方法将经过背景抑制的连续几帧图像构造组合帧,基于目标的运动特性,对分割后的组合帧进行聚类分析,从而检测到弱小目标并同时获得目标运动轨迹,再对检测结果进行聚类检验,从而去除虚假目标,降低虚警率.实验结果表明该算法对多目标的检测有较高的鲁棒性,且相对于传统的小目标检测算法有更高的检测率和较好的实时性.
針對深空揹景下的紅外弱小目標檢測,提齣瞭一種基于聚類分析的目標檢測方法,該方法將經過揹景抑製的連續幾幀圖像構造組閤幀,基于目標的運動特性,對分割後的組閤幀進行聚類分析,從而檢測到弱小目標併同時穫得目標運動軌跡,再對檢測結果進行聚類檢驗,從而去除虛假目標,降低虛警率.實驗結果錶明該算法對多目標的檢測有較高的魯棒性,且相對于傳統的小目標檢測算法有更高的檢測率和較好的實時性.
침대심공배경하적홍외약소목표검측,제출료일충기우취류분석적목표검측방법,해방법장경과배경억제적련속궤정도상구조조합정,기우목표적운동특성,대분할후적조합정진행취류분석,종이검측도약소목표병동시획득목표운동궤적,재대검측결과진행취류검험,종이거제허가목표,강저허경솔.실험결과표명해산법대다목표적검측유교고적로봉성,차상대우전통적소목표검측산법유경고적검측솔화교호적실시성.
In order to detect small targets in deep space, a detecting algorithm based on cluster analysis is proposed. The ap-proach forms a composite frame by a few of infrared images which have been preprocessed, and the composite frame is clus-tered after it is segmented based on moving targets feature. Accordingly, small targets and the trajectories of moving targets can be obtained. The false positive objects are deleted by followed validation process. Experimental results show that this method is robust in small targets detection. Compared with some traditional methods, good performance can be obtained in detection rate and detection efficiency.