[1] XYDEAS C, PETROVIC V. Objective image fusion performance measure[J]. Electronics Letters, 2000, 36(4): 308-309.
[2] QU G, ZHANG D, YAN P. Information measure for performance of image fusion[J]. Electronics Letters, 2002, 38(7): 313-315.
[3] WANG Z, BOVIK A C. A universal image quality index[J]. IEEE Signal Processing Letters, 2002, 9(3): 81-84.
[4] PIELLA G. New quality measures for image fusion[C]. Proceedings of The 7th International Conference on Information Fusion.Stockholm, Sweden, 2004: 542-546.
[5] JING Juan-juan, L Qun-bo, ZHOU Jin-song, et al. Study on the evaluation of fused image[J]. Acta Photonica Sinica, 2007, 36(S1): 313-316.
[6] DI Hong-wei, LIU Xian-feng. Image fusion quality assessment based on structural similarity[J]. Acta Photonica Sinica, 2006, 36(5): 766-771.
[7] LIU Jun, SHAO Zhen-feng. Feature-based remote sensing image fusion quality metrics using structure similarity[J]. Acta Photonica Sinica, 2011, 40(01): 126-131.
[8] HUANG Xiao-qiao, SHI Jun-sheng, YANG Jian, et al. Study on color image quality evaluation by MSE and PSNR based on color difference[J]. Acta Photonica Sinica, 2007, 36(S1): 295-298.
[9] XIE Zheng-xiang, WANG Zhi-fang, XIONG Xing-liang, et al. Color image quality assessment based on noise model of human vision perception and color image quality optimization[J]. Journal of Image and Graphics, 2010, 10: 1454-1464.
[10] CHEN Y, BLUM R S. A new automated quality assessment algorithm for image fusion[J]. Image and Vision Computing, 2009, 27(10): 1421-1432.
[11] CHEN H, VARSHNEY P K. A human perception inspired quality metric for image fusion based on regional information[J]. Information Fusion, 2007, 8(4): 193-207.