数据驱动二次相关滤波器红外目标检测
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高仕博, 程咏梅, 赵永强, 肖利平. 数据驱动二次相关滤波器红外目标检测[J]. 红外与毫米波学报, 2014, 33(5): 498. GAO Shi-Bo, CHENG Yong-Mei, ZHAO Yong-Qiang, XIAO Li-Ping. Data-driven quadratic correlation filter using sparse coding for infrared targets detection[J]. Journal of Infrared and Millimeter Waves, 2014, 33(5): 498.