高光谱图像自适应核联合表示异常检测
唐意东, 黄树彩, 凌强, 钟宇. 高光谱图像自适应核联合表示异常检测[J]. 强激光与粒子束, 2015, 27(9): 091008.
Tang Yidong, Huang Shucai, Ling Qiang, Zhong Yu. Adaptive kernel collaborative representation anomaly detection for hyperspectral imagery[J]. High Power Laser and Particle Beams, 2015, 27(9): 091008.
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唐意东, 黄树彩, 凌强, 钟宇. 高光谱图像自适应核联合表示异常检测[J]. 强激光与粒子束, 2015, 27(9): 091008. Tang Yidong, Huang Shucai, Ling Qiang, Zhong Yu. Adaptive kernel collaborative representation anomaly detection for hyperspectral imagery[J]. High Power Laser and Particle Beams, 2015, 27(9): 091008.