面向图像差异特征融合的基于弗里德曼检验的小波基分类研究
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王向东, 杨风暴, 焦玉茜, 吉琳娜, 吕红亮. 面向图像差异特征融合的基于弗里德曼检验的小波基分类研究[J]. 红外技术, 2019, 41(1): 44. WANG Xiangdong, YANG Fengbao, JIAO Yuqian, JI Linna, LYU Hongliang. Wavelet Bases Classification Research Based on Friedman Test for Image with Difference Features Fusion[J]. Infrared Technology, 2019, 41(1): 44.