Beijing ChenHuazhong ShuHui ZhangGouenou CoatrieuxLimin LuoJean-Louis Coatrieux
The derivation of moment invariants has been extensively investigated in the past decades. In this paper, we construct a set of invariants derived from Zernike moments which is simultaneously invariant to similarity transformation and to convolution with circularly symmetric point spread function (PSF). Two main contributions are provided: the theoretical framework for deriving the Zernike moments of a blurred image and the way to construct the combined geometric-blur invariants. The performance of the proposed descriptors is evaluated with various PSFs and similarity transformations. The comparison of the proposed method with the existing ones is also provided in terms of pattern recognition accuracy, template matching and robustness to noise. Experimental results show that the proposed descriptors perform on the overall better.
Xiubin DaiTianliang LiuHuazhong ShuLimin Luo
Hongqing ZhuMin LiuHanjie JiYu Li
ZhuHongqingLiu-MinJiHanjieLiyu
Chee-Way ChongRaveendran ParamesranRamakrishnan Mukundan
Jitka KostkováJan FlusserMatteo Pedone